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Application of Response Surface Methodology for Determining Optimal Factors in Maximization of Maize Grain Yield and Total Microbial Count in Long Term Agricultural Experiment, Kenya

机译:响应面法在确定最佳因子上的应用-肯尼亚长期农业试验中最大化玉米籽粒产量和总微生物数量的因素

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The Agriculture sector is the main stay of the Kenyan economic development contributing over 70% of the Gross Domestic Product (GDP). The sector is faced with numerous challenges leading to frequent and recurrent food shortages. Declining maize grain yield is one among the major challenges that call for urgent interventions to address the looming food crisis in the country. Maize play a big role in the Kenyan food security and in most case lack of the same is taken to mean food insecurity. It is due the importance attached to the crop that a Long Term Agricultural Experiments (LTAE) was set up specifically to research on the Maize grain yield. Many paper published on the LTAE in the country are only single factors analysis and lack the application of Response Surface Methodology (RSM) approaches in solving challenges facing the low and declining maize grain yield (y_1), total microbe population (y_2) a crucial component of Soil Organic Matter (SOM) and their optimization. The focus of this paper therefore is the application of RSM in maize grain yield and total microbial population optimization. Specifically, the paper determined the most significant factors for maize grain yield and total microbial population (bacteria, fungi, actinomycetes, rhizobia), (screening phase of the paper), constructed of an efficient and appropriate experimental design for evaluating the optimal settings of maize yield and total microbial population count and determined univariate optimal settings for maize grain yield and total microbial population. The primary data was summarized from LTAE in National Agricultural Research Laboratories (NARL) in Kabete under the Kenya Agriculture and Livestock Research Organization (KALRO) and secondary data imputed for experimental points falling outside the set field experimental design points. Two treatment factors were identified as the most significant treatment factors (Farm Yard Manure (FYM) and Nitrogen and Phosphorus (NP)) at their low levels and Circumscribed Central Composite Design (CCCD) with two star points as the most efficient design. CCCD passed most optimal criteria of DAET. Univariately, optimal setting for maize grain yield was realized at 3.8×10~3 kg/ha and that of the total microbial population at 3.6×10~6 count. The study confirmed that it was possible to optimize the input treatment factor that lead to the optimization of both maize grain yield and maintaining maximal total microbial population count at its optimal levels.
机译:农业部门是肯尼亚经济发展的主要支柱,占国内生产总值(GDP)的70%以上。该部门面临众多挑战,导致经常性和反复性的粮食短缺。玉米单产下降是需要紧急干预以解决该国迫在眉睫的粮食危机的主要挑战之一。玉米在肯尼亚的粮食安全中发挥着重要作用,在大多数情况下,缺乏玉米就意味着粮食不安全。由于对作物的重视,专门建立了长期农业试验(LTAE)来研究玉米的籽粒产量。该国在LTAE上发表的许多论文仅是单因素分析,并且缺乏应用响应面方法(RSM)的方法来解决玉米籽粒产量低和下降(y_1),总微生物种群(y_2)至关重要的挑战土壤有机质(SOM)及其优化。因此,本文的重点是RSM在玉米籽粒产量和总微生物种群优化中的应用。具体而言,本文确定了影响玉米籽粒产量和总微生物种群(细菌,真菌,放线菌,根瘤菌)的最重要因素(本文的筛选阶段),构建了一种有效且适当的实验设计来评估玉米的最佳设置产量和总微生物种群数量,以及确定的玉米单产和总微生物种群的单变量最佳设置。原始数据来自肯尼亚农业和畜牧研究组织(KALRO)下卡贝特国家农业研究实验室(NARL)的LTAE,而归因于超出实地实验设计点的实验点的次要数据也已归纳。在低水平时,两个处理因子被确定为最重要的处理因子(农场码粪便(FYM)和氮磷磷(NP)),而以两个星点作为最有效的设计的外接中央复合设计(CCCD)。 CCCD通过了DAET的最佳标准。单变量地,玉米单产的最佳设定为3.8×10〜3 kg / ha,总微生物种群的最佳设定为3.6×10〜6计数。研究证实,有可能优化输入处理因子,从而优化玉米籽粒产量,并使最大总微生物种群数量保持在最佳水平。

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