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An improved assimilation method with stress factors incorporated in the WOFOST model for the efficient assessment of heavy metal stress levels in rice

机译:WOFOST模型中结合压力因子的改进同化方法,用于有效评估水稻中的重金属胁迫水平

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摘要

Heavy metal contamination in crops is a worldwide problem that requires accurate and timely monitoring. This study is aimed at improving the accuracy of monitoring heavy metal stress levels in rice utilizing remote sensing data. An assimilation framework based on remote sensing and improved crop growth model was developed to continuously monitor heavy metal stress levels over the entire period of crop growth based on the growth law of crops and the stress mechanism. Compared with other physiological indices, dry weight of rice roots (WRT) was selected as the best indicator to estimate heavy metal stress levels. The World Food Study (WOFOST) model, widely used for the description of crop growth, was improved by incorporating stress factors with overall consideration for the changes in physiological status under heavy metal stress. Three scenarios were put forward based on the stress factors fDTGA and fcvF, which, respectively, correspond to the daily total gross assimilation of CO2 and carbohydrate-to-dry matter conversion coefficient, and were analyzed for their efficiency of simulating WRT. A method of assimilating the leaf area index (LAI) retrieved from remotely sensed data into the improved WOFOST model was applied to optimize furGA and fc-vF. The results suggested that the scenario using both factors can simulate WRT under heavy metal stress more accurately, with a relative percent error (RPE) lower than 14%. Based on the RS-WOFOST assimilation framework, continuous-spatial-temporal evaluation of heavy metal stress levels based on WRT can be accomplished. (C) 2015 Elsevier B.V. All rights reserved.
机译:作物中的重金属污染是一个世界性的问题,需要准确及时的监测。这项研究旨在提高利用遥感数据监测水稻中重金属胁迫水平的准确性。建立了基于遥感和改良作物生长模型的同化框架,以根据作物的生长规律和胁迫机理,连续监测整个作物生长过程中的重金属胁迫水平。与其他生理指标相比,水稻根的干重(WRT)被选为估算重金属胁迫水平的最佳指标。广泛用于描述作物生长的世界粮食研究(WOFOST)模型通过综合考虑重金属胁迫下生理状态变化的胁迫因素而得到改进。根据应力因子fDTGA和fcvF提出了三种情景,分别对应于CO2的日总同化量和碳水化合物至干物质的转化系数,并分析了它们模拟WRT的效率。将从遥感数据中检索到的叶面积指数(LAI)吸收到改进的WOFOST模型中的方法用于优化furGA和fc-vF。结果表明,使用这两个因素的情况可以在重金属应力下更准确地模拟WRT,相对百分比误差(RPE)低于14%。基于RS-WOFOST同化框架,可以完成基于WRT的重金属应力水平的连续时空评估。 (C)2015 Elsevier B.V.保留所有权利。

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