Linear mathematical models for yield estimation of baby corn (Zea mays L.)

IF 0.7 Q4 PLANT SCIENCES Plant Science Today Pub Date : 2023-10-16 DOI:10.14719/pst.2618
Neetu Rani, Jitender Singh Bamel, Savita Garg, Abhinav Shukla, Sumit Kumar Pathak, Rishta Nandini Singh, Nandini Singh, Sara Gahlot, Kiran Bamel
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Abstract

Linear mathematical models have been developed for predicting baby corn yield in terms of cob volume for two cycles of maize (Zea mays L.). Cob volume is directly proportional to morphological parameters such as length, weight, and girth; hence, linear mathematical models have been developed. Primary data for a random selection of 60 cobs for each cycle were collected, and lab work was carried out to measure the corn ears and cob growth parameters. An irregular distribution was observed among all six growth parameters examined in the study. Descriptive statistical measures were employed to facilitate the description of growth parameters. The final volume of the baby corn cob was used for crop yield estimation. The water displacement method was employed to measure the actual volume of cobs, which was then compared with the volumes estimated using the developed mathematical models. For both cycles, similar trends were observed in both estimated and actual volumes of cobs, providing numerical confirmation for the validity of the developed mathematical models. The theoretical validity of these models was also established using statistical measures such as R2, adjusted R2, F-test, P-value, and correlation coefficient. Any deviations between estimated and actual volumes would indicate changes in the dependent variables of the model, attributed to the effects of climate change, as other internal and external factors are held constant. These models offer a critical predictive tool for stakeholders, enabling improved yield predictions and optimized resource allocation. As a result, they facilitate strategic planning for increased profitability.
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玉米产量估算的线性数学模型
根据玉米(Zea mays L.)两个周期的穗轴体积,建立了预测玉米产量的线性数学模型。棒材体积与长度、重量和周长等形态参数成正比;因此,线性数学模型被开发出来。每个周期随机选取60个穗轴,收集初步数据,并进行实验室工作,测量玉米穗和穗轴生长参数。在研究中检查的所有六个生长参数中观察到不规则分布。为了便于描述生长参数,采用了描述性统计措施。玉米幼穗轴的最终体积用于作物产量估计。采用水驱替法测量玉米芯的实际体积,并将其与利用所建立的数学模型估算的体积进行比较。在这两个周期中,cob的估计体积和实际体积都观察到类似的趋势,为所开发的数学模型的有效性提供了数值证实。采用R2、调整后的R2、f检验、p值、相关系数等统计指标来验证模型的理论效度。估算量与实际量之间的任何偏差都表明,由于其他内部和外部因素保持不变,模式的因变量由于气候变化的影响而发生了变化。这些模型为利益相关者提供了关键的预测工具,可以改进产量预测并优化资源分配。因此,它们促进了提高盈利能力的战略规划。
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来源期刊
Plant Science Today
Plant Science Today PLANT SCIENCES-
CiteScore
1.50
自引率
11.10%
发文量
177
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