Department of Physics and Computer Science, Dayalbagh Educational Institute, Agra, 282005, India.
Sci Rep. 2023 May 26;13(1):8598. doi: 10.1038/s41598-023-35285-3.
This paper presents a simple method for detecting both biotic and abiotic stress in plants. Stress levels are measured based on the increase in nutrient uptake by plants as a mechanism of self-defense when under stress. A continuous electrical resistance measurement was used to estimate the rate of change of nutrients in agarose as the growth medium for Cicer arietinum (Chickpea) seeds. To determine the concentration of charge carriers in the growth medium, Drude's model was used. For identifying anomalies and forecasting plant stress, two experiments were conducted and outliers were found in electrical resistance and relative changes in carrier concentration. Anomaly in the first iteration was detected by applying k-Nearest Neighbour, One Class Support Vector Machine and Local Outlier Factor in unsupervised mode on electrical resistance data. In the second iteration, the neural network-based Long Short Term Memory method was used on the relative change in the carrier concentration data. As a result of the change in resistance of growth media during stress, nutrient concentrations shifted by 35%, as previously reported. Farmers who cater to small communities around them and are most affected by local and global stress factors can use this method of forecasting.
本文提出了一种简单的方法,用于检测植物的生物和非生物胁迫。胁迫水平是基于植物在胁迫下作为自我防御机制增加养分吸收来衡量的。通过连续的电阻测量来估计琼脂作为鹰嘴豆(鹰嘴豆)种子生长介质中养分变化的速率。为了确定生长介质中的电荷载流子浓度,使用了 Drude 模型。为了识别异常和预测植物胁迫,进行了两项实验,并在电阻和载流子浓度的相对变化中发现了异常值。通过在无监督模式下对电阻数据应用 k-最近邻、单类支持向量机和局部离群因子,在第一次迭代中检测到异常。在第二次迭代中,使用基于神经网络的长短时记忆方法对载流子浓度数据的相对变化进行处理。由于在胁迫期间生长介质的电阻发生变化,正如之前报道的那样,养分浓度发生了 35%的偏移。那些迎合周围小社区的农民,以及受本地和全球压力因素影响最大的农民,可以使用这种预测方法。