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Photosynthetic Rate Prediction of Tomato Plant Population Based on PSO and GA

机译:基于PSO和GA的番茄植物种群光合速率预测

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Photosynthesis is the basis of plant growth and it has a great significance to study the photosynthetic rate of plant population. In this paper, the LI-6400XT photosynthetic rate instrument and assimilation chamber were used to establish the plant photosynthetic rate prediction models. The wireless sensor network (WSN) system and assimilation chamber were used to monitor environmental information in real time, including time, air temperature, air humidity, temperature of assimilation chamber, temperature of gases in closed system, CO_2 concentration in assimilation chamber, light intensity, pressure of the atmosphere and leaf area. The Grid and pixel conversion method were used to measure the whole plant leaf area of tomato. As a semi-closed measurement system, the assimilation chamber was used to calculate the plant population photosynthetic rate together with LI-6400XT. To establish the plant population photosynthetic rate prediction models based on support vector machine (SVM), the greenhouse environmental parameters were used as input parameters and the photosynthetic rate was taken as the output parameters. In order to improve the prediction accuracy of the model, the input neurons were standardized using Z score method and then processed by principal component analysis. The principal components were selected according to the principal components' cumulative contribution rate. The particle swarm optimization (PSO) and grid search method (GA) were used to optimize the parameter of SVM The results indicated that the correlation coefficient of the photosynthesis prediction model based on PSO and GA parameter optimization were 0.9883 and 0.9878 respectively. Experimental results show that this model has a high accuracy.
机译:光合作用是植物生长的基础,研究植物种群的光合速率具有重要意义。本文采用了Li-6400xt光合速率仪器和同化室来建立植物光合速率预测模型。无线传感器网络(WSN)系统和同化室用于实时监测环境信息,包括时间,空气温度,空气湿度,同化室的温度,闭合系统中的气体温度,同化室中的CO_2浓度,光强度,大气和叶面积的压力。网格和像素转换方法用于测量番茄的整个植物叶面积。作为半闭合测量系统,使用同化室与LI-6400XT一起计算植物种群光合速率。为了建立基于支持向量机(SVM)的植物种群光合速率预测模型,温室环境参数用作输入参数,作为输出参数的光合速率。为了提高模型的预测准确性,使用Z得分法则标准化输入神经元,然后通过主成分分析处理。根据主要成分的累积贡献率选择主要成分。粒子群优化(PSO)和网格搜索方法(GA)用于优化SVM的参数,结果表明,基于PSO和GA参数优化的光合作用预测模型的相关系数分别为0.9883和0.9878。实验结果表明,该模型具有高精度。

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