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Article

The Effect of Climate Variability on Maize Production in the Ejura-Sekyedumase Municipality, Ghana

1
Forestry Commission, Donor Relations and Projects, Accra, Ghana
2
Department of Environmental Science, Kwame Nkrumah University of Science and Technology, Kumasi, Ghana
3
Department of Fisheries, Kwame Nkrumah University of Science and Technology, Kumasi, Ghana
*
Author to whom correspondence should be addressed.
Submission received: 13 August 2021 / Revised: 6 September 2021 / Accepted: 22 September 2021 / Published: 26 September 2021
(This article belongs to the Section Climate Adaptation and Mitigation)

Abstract

:
Agriculture is one of the sectors most susceptible to changes in climatic conditions. The impact is even stronger in Africa, where rain-fed agriculture is vital for daily subsistence, but where adaptive capacity is low. It is therefore crucial to increase the understanding of the actual climate change dynamics on agricultural productivity. This study examined the effects of changes in climatic variables such as rainfall and temperature on maize production in the Ejura-Sekyedumase Municipality, Ghana. Regression, chi-square and trend analyses were used to establish the relationship between climate variables (rainfall and temperature) and maize yield in the study area. This was supplemented with participatory household interviews with 120 farmers to understand the perception of farmers on rainfall and temperature patterns. The results from the study respondents and trend analysis show that rainfall is shorter in terms of duration and less predictable, whilst temperature has increased. The findings suggest that the general relationship between rainfall, temperature and maize yield is such that maize yield increased with increasing rainfall of the right amount and distribution pattern and decreased with increasing temperature. The study concludes that climate variability and/or change is evident in the study area and its effect on maize yield is severe.

1. Introduction

In spite of Ghana’s transition to service and industry sectors-led economy in recent years, agriculture is still very important to Ghana’s economy, contributing about 19.2 percent to the country’s GDP [1]. It is possible to achieve an agricultural growth rate of 6% as detailed in the Comprehensive African Agriculture Development Programme (CAADP) [2], but standing in the path to this possible achievement is a potential negative effect of climate variability and/or change [3]. Ghana’s agriculture is predominantly rain-fed and this makes the sector extremely vulnerable to the adverse impacts of climate change [4].
Agriculture is a major source of livelihood for millions of households in Ghana, where small-scale farmers dominate with 80% of domestic production. Studies have shown that, in the past forty years, Ghana has experienced changes in climatic conditions [5]. Since 1960, every ten years, there has been an increased average annual temperature by 1 °C [6]. Monthly rainfall has decreased by 2.4% during the period; however, rainfall amounts were particularly high [6]. Studies (e.g., [7]) suggest that changes in climatic variables such as rainfall and temperature will have a substantial impact on crop yield in Ghana. With the year 2000 as the baseline, findings by [7] showed that by 2050, the overall yield of rain-fed maize and rice will decrease by less than 25% and that of groundnuts above 25% as a result of climate change. This could affect the attainment of Sustainable Development Goal 2 relating to achieving food security for all by the year 2030. The impacts of climate change on maize production are compounded by interplay with other non-climatic factors such as high consumption patterns and complex land tenure issues that limit the adaptive capacity of farmers [8].
A study conducted in the Sahel [9] reported that farmers are aware of changes in climatic conditions such as rainfall and temperature. Similarly, in a World Bank study, [10] found that farmers in Africa perceived changes in rainfall and temperature. These findings are corroborated by a study conducted in Botswana, Ethiopia, Ghana and Malawi, where farmers reported perceived changes in rainfall [11]. Studies in the Ejura-Sekyedumase Municipality, the study area for this paper, report similar findings [12,13]. These perceived changes in climatic conditions, according to the farmers, affect maize yield [12]. Maize is the most important crop in Ghana in terms of the agricultural sector and food security [14]. It is a source of energy, vitamins and a negligible amount of protein for humans, and a major ingredient in feed formulation for livestock [15]. It leads in terms of area planted, and it is only second to cocoa in terms of commodity crop [14] and represents more than 50% of total cereal production in Ghana [16]. It is also the most widely consumed staple food in Ghana with increasing production since 1965 [17]. Maize production plays a vital role in food security for many poor households in Ghana [18] with a per capita consumption of over 100 kg while also serving as a cash crop [12].
The study area is one of the key food-producing areas in Ghana, and specifically maize production. Maize is a staple in Ghana, and how changing climate will affect its production is important to understand but very little has been studied [4,19]. To contribute to the adaptation of maize farmers in Ejura-Sekyedumae Municipality to changing climatic conditions requires that they are well-informed about the phenomenon and its adverse effect on their livelihoods. To address this, the study assessed the perception of farmers on rainfall and temperature patterns in the Ejura-Sekyedumae Municipality. The study further determined the extent of rainfall and temperature changes in the Ejura-Sekyedumae Municipality and the effect of rainfall and temperature variability on maize production in the Ejura-Sekyedumae Municipality. The study concludes that climate variability and/or change is evident in the study area and its effect on maize yield is severe. This paper contributes to the understanding of the effects of climate variability and/or change on maize production in the Ejura-Sekyredumase Municipality, Ghana. This evidence will provide the opportunity for policymakers to devise appropriate policy interventions to reduce the vulnerability of small-scale maize farmers to the adverse impacts of climate variability and/or change.

2. Materials and Methods

2.1. Selection and Description of the Study Area

The Ejura-Skyedumase Municipality leads in maize production in the Ashanti Region and is one of the leading producers in Ghana [20]. The municipality is located within longitudes 1°5″ W and 1°39″ W and latitudes 7°9″ N and 7°36″ N [21]. It experiences both savannah and forest climatic conditions with a bimodal type of rainfall in the Guinea Savannah and semi-deciduous forest agro-ecological zones. The average annual minimum and maximum temperatures are 21.4 °C (±0.4) and 31.2 °C (±0.5), respectively, with an average annual temperature of 26.30 °C [22]. The major season is April to June, whilst the minor season is September to November, with an average annual rainfall of 1430.0 mm [22]. The dry season ranges between November to April, and during this time, the North-East trade winds, popularly known as the Harmattan, blow dry and dusty air across the municipality [20]. The warmest months are between January and April, whilst the coolest months range between July and August [19]. The wet season is related to very high humidity, June records the highest relative humidity as high as 90% and February records relative humidity as low as 55%. The municipality is the driest in the Ashanti Region [20].
This study considered a questionnaire survey with farmers in three (3) communities in the study area, which were selected on the criteria that, the communities should have been or are being exposed to some sort of changes in climatic conditions. Based on the above criteria and local experts’ advice, Ejura, Dromankuma and Kyenkyenkura were selected for the study. Figure 1 presents Ghana with the study communities.

2.2. Household Surveys

Purposeful Random Sampling (PRS) was used to select one hundred and twenty (120) farmer households from the target communities and a semi-structured questionnaire administered to them. To avoid bias, in a household with more than one farmer, the questionnaire was administered to only one farmer. Each questionnaire took about twenty-five minutes to administer, and responses were recorded in writing and in audio and were later transcribed. Factors considered in the PRS included age, farming experience and gender in order to have a representation of the several social groups within each community and to ensure that people who were very knowledgeable on the theme of the research were interviewed.
The questionnaire was administered to forty (40) farmer households in each community in their homes. The questionnaire had a mix of close-ended questions with response options and open-ended questions to explore the answers of the respondents. The main questions administered were: (i) Have you perceived changes in rainfall and temperature? (ii) If you have perceived changes in rainfall and temperature, did it affect your maize crop? (iii) If the perceived changes affected your maize crop, did it lead to increase yield or decrease yield? (iv) If it led to decreased yield, in your opinion what accounted for the decrease in yield over the period? The survey data for the research were collected in June 2017.

2.3. Secondary Data Collection

Rainfall and temperature (minimum and maximum) data for the study area were obtained from the Ghana Meteorological Agency (GMet) in Accra covering the period between 2004 and 2015 for rainfall and 2004 and 2010 for temperature. The rainfall and temperature data were limited to 2004 to 2015 and 2004 to 2010, respectively, because data were available in those years at the time. Maize yield data for the study area were also obtained from the Ministry of Food and Agriculture (MoFA) covering the period between 2004 and 2015.

2.4. Data Analysis

A simple correlation method—rainfall, temperature and maize yield composite analysis—was used in order to examine the relationship between annual rainfall and maize yield and total average annual temperature and maize yield. Figures were used to describe and explore relationships of the variables used at the inter-annual time scale. Graphs were generated to deduce the trends.
Using average climate data (rainfall and temperature) between 1971 and 2000 as a baseline, the variance between the baseline and the annual rainfall and temperature data, respectively, were calculated. Regression and chi-square analysis were used to analyze annual rainfall and maize yield and total average annual temperature and maize yield to deduce the relationship between the variables used.
The equation for the linear regression is Y = b1 + b2X, where b1 is the intercept, and b2, the regression constant, X is the independent variable (total average annual rainfall/temperature), and Y, the dependent variable (annual maize yield). The responses by the farmers were coded and analyzed using SPSS (version 23). Tables and graphs were used to display the data in order to deduce the trends

3. Results

3.1. Farmers’ Perception of Climate Variability in the Study Area

As the focus of this study, farmers were asked whether they have over the years experienced variations that are perceived to be related to climatic changes. Table 1 summarizes the results where respondents indicated their knowledge or otherwise on the climatic variables. About 116 (96.7%) respondents indicated that they had noticed more rains in the past compared with now. The same number of respondents said they had noticed a decrease in total rainfall patterns in recent years compared with the past. The results show that 118 (98.3%) respondents said they had noticed changes in the duration of rainfall in recent years compared with the past. A total of 117 (97.5%) respondents indicated they had noticed changes in the onset of rains compared with the past and 110 (91.7%) noticed rainfall season has become shorter compared with the past.
When asked whether rains come earlier compared with their childhood, 95 respondents representing 79.2% responded in the negative; however, when the same question was rephrased, 98 respondents, representing 81.7%, responded in the affirmative that, compared with their childhood, the rains come later. This is an indication that the respondents had noticed late rains in recent years. About 105 (87.5%) had noticed increased temperatures in recent times compared with the past, 95 (79.2%) had noticed increased wind storms in recent times compared with the past, whiles only 34 respondents, representing 28.3%, had noticed increased flooding compared with the past.

3.2. Inter-Annual Rainfall and Temperature Variability in the Study Area

The trend of annual rainfall (mm) from 2004 to 2015 in the study area is as shown in Figure 2. The highest annual rainfall was recorded in 2010 (1573.7 mm), which is above the study area’s average highest annual rainfall (1971–2000) of 1430.0 mm. The lowest annual rainfall was recorded in 2012 (1065.4 mm), which is below the study area’s average lowest annual rainfall (1971–2000). The pattern showed varied rainfall data.
Figure 3 indicates that there was high inter-annual rainfall variability in the study area, with 2011, 2013 and 2012 experiencing the highest reduction of 238.5 mm, 261.0 mm and 364.6 mm, respectively, below the study area’s average (1971–2000). With the exception of 2010, which experienced 143.7 mm of rainfall above the study area’s average (1971–2000), rainfall amount for 2004, 2006 and 2007 only varied from 26.7 mm to 57.5 mm above the study area’s average (1971–2000).
Figure 4 shows the total average annual temperatures trend in the study area from 2004 to 2010. The highest total average annual temperature was recorded in 2010 (28.36 °C) and the lowest total average annual temperature was recorded in 2004 (24.80 °C).
From Figure 5, the total average annual temperature departs from the study area’s average (1971–2000) of 26.30 °C. The total average annual temperature for 2006, 2007, 2008, 2009 and 2010 was higher than the study area’s average (1971–2000) with 2010 recording the highest departure of 2.06 °C.

3.3. Intra-Annual Variability of Rainfall in the Study Area

The trend of the total intra-annual variability of rainfall from 2004 to 2015 in the study area is as shown in Figure 6. The distribution of rainfall showed that in 2004, 2008, 2009, 2011, 2013, 2014 and 2015, the amount of rain received during the major rainy season (April–June) was higher than the minor rainy season (September–November).
However, the trend was different in 2005, 2006, 2007, 2010 and 2012, where the amount of rain received in the minor season was higher than the amount received in the major season. It can be seen that lower amounts of rains in the major season were compensated for by higher amounts of rains during the minor season. In 2010, the highest amount of rainfall (248.3 mm) was recorded in August, which is outside the normal rainy season months in the study area. This accounts for why 2010 was the year with the highest annual rainfall (1573.7 mm). January and December were the months with predominantly less rainfall and in some cases no rainfall.

3.4. Relationship between Rainfall and Maize Yield

Figure 7 shows the relationship between annual rainfall and annual maize yield for 2004 to 2015 in the study area. As rainfall decreased from 1456.7 mm to 1286.2 mm in 2004 to 2005, maize yield also saw a decline from 1.4 t/Ha to 1.29 t/Ha. However, the trend changed in 2006 as maize yield decreased further to 1.22 t/Ha even though rainfall increased sharply to 1470.7 mm. Between 2006 and 2007, rainfall increased marginally, and maize yield also increased marginally and maintained a constant figure through 2008 and 2009 at 1.25 t/Ha; however, rainfall fluctuated moderately at 1287.8 mm and 1319.6 mm, respectively.
The year 2010 recorded the highest maize yield of 1.8 t/Ha and at the same time recorded the highest rainfall of 1573.7 mm. The year 2011 recorded the lowest maize yield of 1.18 t/Ha, while 2012 recorded the lowest rainfall of 1065.4 mm for the study period. The trend for 2009, 2010, 2011, 2013, 2014 and 2015 is such that, maize yield increased with increasing rainfall and vice versa.

3.5. Relationship between Temperature and Maize Yield

Figure 8 shows the relationship between total average annual temperature and annual maize yield for 2004 to 2010 in the study area. As the temperature increased from 24.79 °C to 24.87 °C in 2004 and 2005, respectively, maize yield also decreased from 1.4 t/Ha to 1.29 t/Ha. A similar trend was observed in 2006 as temperature increased further to 26.48 °C maize yield saw a further decline to 1.22 t/Ha. The trend, however, changed in 2007 as there was a marginal increase in maize yield of 1.25 t/Ha, even though temperature increased sharply to 27.96 °C. The years 2008 and 2009 recorded the same maize yield as 2007, even though temperature declined marginally from 27.87 °C (2008) to 27.83 °C (2009). The year 2010 recorded the highest temperature of 28.36 °C as well as the highest maize yield of 1.8 t/Ha.

3.6. Regression for the Relationship between Rainfall and Maize Yield

From Table 2, annual maize yield = 0.762 + 4.378 × 10−4 (annual rainfall). The constant term (intercept) is indicative of the fact that the annual maize yield will be 0.762 metric tons per hectare if the annual rainfall was 0 mm. The slope of the line (4.378 × 10−4 also shows that an increase in the annual rainfall by 1 mm will increase the annual maize yield by 4.378 × 10−4 (0.0004378) metric tons per hectare. Thus, there is a slight positive relationship between annual rainfall and the annual maize yield.
From Table 2, the regression reported an R squared of 0.161. This means that annual rainfall (the independent variable) is able to account for approximately only 16.1% of the variations in the annual maize yield over the period. Indirectly, about 83.9% of the variations in the maize yield annually cannot be accounted for by the annual rainfall. These variations are caused by other factors that affect annual maize production, which are exogenous to the model (for example, fertilizer application and/or manure, use of improved varieties, improved technology, etc.) that could have various effects on the output of annual maize per hectare.

3.7. Regression for the Relationship between Temperature and Maize Yield

From Table 2, Annual maize yield = 0.513 - 0.031 (total average annual temperature). The constant term (intercept) is indicative of the fact that the annual maize yield will be 0.513 metric tons per hectare if the total average annual temperature was 0 °C. The slope of the line (−0.031) also shows that an increase in the total average annual temperature by 1 °C will decrease the annual maize yield by 0.031 metric tons per hectare. Thus, there is a negative relationship between the total average annual temperature and the annual maize yield.
From Table 2, the regression reported an R squared of 0.053. This means that the total average annual temperature is able to explain approximately 5.3% of the variations in the annual maize yield over the period. Implicitly, about 94.7% of the annual variations in the maize yield cannot be explained by the total average annual temperature. These variations are caused by other factors that affect annual maize production, which are exogenous to the model (for example, the use of improved seeds, the use of drought-resistant crops, and irrigation) which could have effects of diverse magnitudes on the output of annual maize yield per hectare.

4. Discussion

4.1. Perception of Rainfall and Temperature Changes in the Study Area

Farmers in the study area have observed changes in climatic conditions, particularly rainfall and temperature. A clear majority of the farmers reported that they have noticed a reduction in rainfall amount. This observation by the farmers is similar to results by [11], where they reported that 90% of respondents said that the rainfall amount had reduced compared to their childhood. Reference [23] reports that total annual rainfall is not decreasing; however, the amount recorded during the planting period has been decreasing in a study conducted in the Northern Savannah zone of Ghana. They concluded that, for this reason, many of the farmers reported noticing a decrease in rainfall amount. Reference [24] reports that the amount and distribution of rainfall within the planting season are more important than the total annual rainfall within the season. In terms of rainfall pattern, the number of respondents who noticed declining rainfall amount also noticed a change in the rainfall pattern. It was, however, not clear if this change means the rainfall pattern has become “erratic or unpredictable”.
Studies have shown that when farmers report noticing changes in rainfall pattern, they mean rainfall has become “more erratic” or “more unpredictable” compared to their past [11]. Almost all the farmers reported noticing changes in the duration of rainfall in recent times. These results support findings in other African countries by [11], which found that farmers in Malawi perceive the rainy period to be shorter now compared to the previously longer periods with heavy rainfall. Additionally, using 2000 as the baseline, they found that farmers in Ethiopia observed that the rains lasted longer than 3 months and with more precipitation at each rain event, which is now less than a week and provides less water. As was the case for the duration, it was almost unanimous among the farmers that the onset of the rainfall has changed. This finding corroborates results by [13] that over 90% of respondents were of the view that rainfall timing had changed, resulting in increased frequency of drought in the Ejura-Sekyedumase municipality. Our findings also corroborate that of [11], who reported that interviews across Malawi concluded that the rainy season now starts 1–1.5 months later.
Temperature, another climatic variable, was perceived to have increased in recent times compared to the past by a significant number of respondents. The authors of [23] reported similar findings, that about 80.2% of their survey respondents had the perception that the average temperature in their communities had increased in the past 30 years. Additionally, in a study by [25] in the Ejura-Sekyedumase municipality, results showed that about 92% of the respondents perceived increases in temperature.

4.2. Exploring the Extent of Climate Variability in the Study Area

Climate change and/or variability are projected to have serious environmental, economic and social impacts on Ghana [25]. It is expected to be severe for rural farmers whose livelihoods depend largely on climatic conditions, particularly rainfall. The extent of these impacts depends largely on awareness and the level of adaptation in response to climate change and/or variability [25]. Evidence from the household survey indicates that farmers are well aware of climate variability and by extension climate change and are employing on-farm and off-farm adaptation strategies to mitigate the impact on their livelihood. This finding is in line with results from studies by researchers in the study area (e.g., [12,13,26]).
The farmers’ awareness of climate variability is evidenced in their perception of changes in rainfall and temperature. In a study in the Northern Savannah zone of Ghana, farmers cited a decline in rainfall amounts and changes in planting time as evidence of climate change [23]. As planting is tied to the onset of the rains, farmers’ assertion that changes in planting time are evidence for climate change relates to the onset of the rain. This result resonates with the findings of this study. Additionally, reference [25] reports that farmers generally perceived climate change and/or variability in terms of erratic rainfall distribution, reduction in rainfall amounts, and increasing temperatures. The trend of annual rainfall from twelve-year data analyzed revealed that there was high inter-annual rainfall variability in the study area. The nature of this variability is similar to studies by [27] that inter-annual rainfall variability is a characteristic of sub-Sahara regions.
The variability of rainfall in the study area was not only between years but also within years. Such occurrence has a high probability to have substantial effects on crop production in the study area because the amount and frequency of precipitation determine the success or failure of crop production in a given year [28]. Additionally, the trend of seven-year data analyzed indicated that temperature was increasing with time. This confirms the World Bank’s finding that temperatures in Africa are becoming warmer in recent years [9]. Subjective approaches to the measurement of climate change have been criticized on the grounds that climate change is difficult to detect accurately based on personal experience [29]. Although farmers in the Ejura-Sekyedumase Municipality based their perceptions of changes in climatic variables on past weather conditions, their perceptions generally corresponded with the evidence of changes recorded by nearby weather monitoring stations.

4.3. Relationship between Rainfall and Maize Yield

The results suggest that the general relation between rainfall and maize yield is such that maize yield increases with increasing rainfall of the right amount and distribution pattern. The year 2010 recorded the highest maize yield and at the same time recorded the highest annual rainfall. The results show that 2010 not only recorded the highest rainfall amount but also the evenly distributed rainfall pattern for the study period, with August, a non-traditional rainy month, recording the highest amount of rainfall (248.3 mm) in that year. This indicates that rainfall in the right amount and distribution pattern is a critical factor for maize yield. This confirms the study by [30] that showed that the maize crop totally depends upon the amount and frequency of rainfall as well as its distribution on temporal and spatial scales.
In 2006, even though rainfall amount was considerably high, the maize yield was comparatively low. This might be due to the fact that if the amount of rainfall is above normal, it causes waterlogging and therefore affects maize production (Figure 6). This confirms the study by [31] showing that the correlation between rainfall variability and maize production indicated that as rainfall continues to increase above normal, the additional gain in maize production begins to diminish. It also confirms the study by [30] finding that maize requires a specific amount of water; an increase in rain enhances the yield up to certain limits beyond that threshold the grain yield decreases. Although 2012 recorded the lowest rainfall amount, it recorded a relatively high maize yield. This might be due to the fact that other factors, such as the use of improved seeds and fertilizer application, might have contributed to the boost in production in the year. This was confirmed by respondents who said that, with the advent of fertilizer, agro-chemicals, improved varieties, tractor services and new technologies, the yield was expected to be high but for climate variability and change.
Respondents in the study area highlighted that in years in which rainfall amount was low, maize yield decreases significantly. However, there are varying findings on the impact of rainfall on maize yield in the literature. The authors of [32] found that there is a significant positive correlation (p < 0.05) between maize yield and precipitation in Eastern United States. Reference [33] indicated that precipitation has negative effects on maize yields in the Middle East and parts of Northeast China. The authors of [34] also found a negative correlation between precipitations and maize yields in the northern plain of China. Reference [35] also shows that a 1 mm increase in precipitation decreases maize production by 0.02%. Findings by [36,37] revealed that maize plants tend to experience extreme sensitivity to water deficit during flowering to the beginning of the grain-filling phase. The authors of [11], in a study on how climate change impacts maize, reported that farmers suffer low yield in “bad years” as they are not able to harvest any grain at all in some seasons due to rainfall failure.

4.4. Relationship between Temperature and Maize Yield

The results suggest that the general relationship between temperature and maize yield is such that maize yield decreases with increasing temperature. However, in 2007, there was a marginal increase in maize yield, even though the temperature increased sharply. This can be explained by the fact that 2007 received a considerable amount of rainfall. Similarly, 2010 recorded the highest temperature value, yet it also recorded the highest maize yield value. This is because 2010 also recorded the highest rainfall amount as well. This is an indication that rainfall in the right amount and distribution pattern can mitigate the effect of temperature on maize yield.
Maize has been found to be one of the most sensitive crops to weather variations, in particular temperature [38]. Temperature seems to decrease maize yields: an increase by one standard deviation in temperature translates into a fall of about 1.4% in maize yields in the northern spring maize zone of China [39]. Generally, increased warming has a tendency to accelerate the loss of water from soil, thereby affecting maize growth from germination to vegetative growth and later grain filling [40]. In a study in the Shanxi Province in China, [41] found that a one percent increase in extreme-heat-degree days and consecutive-dry days result in a maize yield decline of 0.2% and 0.07%, respectively. They found further that, if all the historical temperatures in the villages are shifted up by 2 degrees Celsius, the total impacts of these extreme events would lead to a reduction in maize yield by over 30%. They concluded that the impacts may even be worse since they did not exclude the offset effect of adaptation measures adopted by farmers to combat these extreme events.

5. Conclusions

This paper builds on studies on climate change and implications of its variability on crop in Ghana [4,19] by analysing the effect of changes in climatic variables such as rainfall and temperature on maize yield in the Ejura-Sekyedumase municipality, Ghana. The research tried to authenticate farmers’ perceptions of climate variability with the real variations based on rainfall and temperature data (climate data) recorded from 2004 to 2015 (rainfall) and 2004 to 2010 (temperature).
This paper has confirmed that rainfall is less predictable, shorter in duration and reduced in amount, whilst temperature has become warmer, in recent years [6,42,43]. The paper further confirmed that rainfall in the right amount and distribution pattern is the most critical factor that affects crop (maize) production [30,44].
The paper revealed that the general relationship between rainfall, temperature and maize yield was such that, maize yield increased with increasing rainfall of the right amount and distribution pattern and decreased with increasing temperature. It is worth noting that, due to the limited availability of secondary data, the comparison between rainfall and maize yield spans for twelve (12) years, while that of temperature and maize yield spans for seven (7) years.
The results indicated that climate variability and/or change has adverse consequences on maize production. For example, erratic and unpredictable rainfall patterns, shorter rainfall duration and higher temperatures adversely affect maize yield. From the results, it can be concluded that climate change and/or variability is evident in the Ejura-Sekyedumase municipality, and its effects on maize yield are severe.
To this end, it is urgent to encourage interventions that improve the food production systems in the municipality so as to increase farmers’ ability to withstand the variability of rainfall. One strategy would be to finance agricultural research and extension and other methods to reduce food production losses associated with changes in climatic variables such as rainfall and temperature.
Finally, given the large doubts about future rainfall patterns, attention should be directed towards investments in support of water resources development and irrigation infrastructural development so as to restrict the impacts of food production losses.

Author Contributions

Conceptualization and writing—original draft preparation, G.P.C.; supervision and writing—review and editing, P.A.-A.; writing—review and editing, B.A.G. All authors have read and agreed to the published version of the manuscript.

Funding

This research received no external funding.

Data Availability Statement

The data presented in this study are available on request from the corresponding author. The data are not publicly available and were collected from GMeT and MoFA in person.

Conflicts of Interest

The authors declare no conflict of interest.

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Figure 1. Ghana showing study communities.
Figure 1. Ghana showing study communities.
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Figure 2. Annual rainfall (mm) in Ejura-Sekyedumase Municipality (2004–2015); NB: average annual rainfall (1971–2000) for the municipality is 1430.0 mm.
Figure 2. Annual rainfall (mm) in Ejura-Sekyedumase Municipality (2004–2015); NB: average annual rainfall (1971–2000) for the municipality is 1430.0 mm.
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Figure 3. Annual rainfall (mm) anomalies in Ejura-Sekyedumase Municipality (2004–2015); NB: average annual rainfall (1971–2000) for the municipality is 1430.0 mm.
Figure 3. Annual rainfall (mm) anomalies in Ejura-Sekyedumase Municipality (2004–2015); NB: average annual rainfall (1971–2000) for the municipality is 1430.0 mm.
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Figure 4. Total average annual temperature (°C) trend in the Ejura-Sekyedumase Municipality (2004–2010); NB: total average annual temperature (1971–2000) for the municipality is 26.3 °C.
Figure 4. Total average annual temperature (°C) trend in the Ejura-Sekyedumase Municipality (2004–2010); NB: total average annual temperature (1971–2000) for the municipality is 26.3 °C.
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Figure 5. Total average annual temperature (°C) anomalies in Ejura-Sekyedumase Municipality (2004–2010); NB: total average annual temperature (1971–2000) for the municipality is 26.3 °C.
Figure 5. Total average annual temperature (°C) anomalies in Ejura-Sekyedumase Municipality (2004–2010); NB: total average annual temperature (1971–2000) for the municipality is 26.3 °C.
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Figure 6. (ad): Intra-annual rainfall distribution in Ejura-Sekyedumase Municipality (2004–2015).
Figure 6. (ad): Intra-annual rainfall distribution in Ejura-Sekyedumase Municipality (2004–2015).
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Figure 7. Relationship between annual rainfall (mm) and annual maize yield (t/Ha).
Figure 7. Relationship between annual rainfall (mm) and annual maize yield (t/Ha).
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Figure 8. Relationship between total average annual temperature (°C) and annual maize yield (t/Ha).
Figure 8. Relationship between total average annual temperature (°C) and annual maize yield (t/Ha).
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Table 1. Farmers’ perception of climate variability in Ejura-Sekeyedumase Municipality.
Table 1. Farmers’ perception of climate variability in Ejura-Sekeyedumase Municipality.
VariablesResponse
YesNoDo Not KnowTotal
Noticed more rain today compared to your childhood (or when you first moved into this community)1 (0.8)116 (96.7)3 (2.5)120 (100.0)
Noticed a decrease in total rainfall patterns in recent years compared to childhood (or when you first moved into this community)116 (96.7)3 (2.5)1 (0.8)120 (100.0)
Noticed changes in the duration of rainfall in recent years compared to childhood (or when you first moved into this community)118 (98.3)0 (0.0)2 (1.7)120 (100.0)
Noticed changes in the onset of rains compared to my childhood117 (97.5)0 (0.0)3 (2.5)120 (100.0)
Noticed rainfall season has become shorter110 (91.7)3 (2.5)7 (5.8)120 (100.0)
Noticed rainfall season has become longer3 (2.5)110 (91.7)7 (5.8)120 (100.0)
Compared with my childhood, the rains come earlier19 (15.8)95 (79.2)6 (5.0)120 (100.0)
Compared with my childhood, the rains come later98 (81.7)18 (15.0)4 (3.3)120 (100.0)
Temperatures of the growing season have increased compared to childhood (or when you first moved into this community)105 (87.5)13 (10.8)2 (1.7)120 (100.0)
Temperatures of the growing season have decreased compared to childhood (or when you first moved into this community)13 (10.8)105 (87.5)2 (1.7)120 (100.0)
There has been increased in wind storms compared to childhood (or when you first moved into this community)95 (79.2)18 (15.0)7 (5.8)120 (100.0)
Flooding has increased compared to childhood (or when you first moved into this community)34 (28.3)82 (68.3)4 (3.3)120 (100.0)
Numbers in parentheses are percentages while those not in parentheses are the respondent counts.
Table 2. Regression analysis of rainfall and temperature against maize yield.
Table 2. Regression analysis of rainfall and temperature against maize yield.
(a) Rainfall
Coefficients a
ModelUnstandardized CoefficientsStandardized CoefficientstSig.
BStd. ErrorBeta
(Constant)0.7620.421 1.8090.101
Annual Rainfall4.378 × 10−40.0000.4011.3840.196
Model Summary
ModelRR SquareAdjusted R SquareStd. Error of the Estimate
10.401 b0.1610.0770.15624
(b) Temperature
Coefficients a
ModelUnstandardized CoefficientsStandardized CoefficientstSig.
BStd. ErrorBeta
(Constant)0.5131.594 0.3220.761
Average Annual Temperature−0.0310.0590.2290.5270.621
Model Summary
ModelRR SquareAdjusted R SquareStd. Error of the Estimate
10.229 c0.053−0.1370.22002
a Dependent Variable: Annual Quantity of Maize Produced (t/Ha). b Predictors: (Constant), Total Annual Rainfall (mm). c Predictors: (Constant), Average Annual Temperature (°C).
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Cudjoe, G.P.; Antwi-Agyei, P.; Gyampoh, B.A. The Effect of Climate Variability on Maize Production in the Ejura-Sekyedumase Municipality, Ghana. Climate 2021, 9, 145. https://0-doi-org.brum.beds.ac.uk/10.3390/cli9100145

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Cudjoe GP, Antwi-Agyei P, Gyampoh BA. The Effect of Climate Variability on Maize Production in the Ejura-Sekyedumase Municipality, Ghana. Climate. 2021; 9(10):145. https://0-doi-org.brum.beds.ac.uk/10.3390/cli9100145

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Cudjoe, Godwin P., Phillip Antwi-Agyei, and Benjamin A. Gyampoh. 2021. "The Effect of Climate Variability on Maize Production in the Ejura-Sekyedumase Municipality, Ghana" Climate 9, no. 10: 145. https://0-doi-org.brum.beds.ac.uk/10.3390/cli9100145

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