在不同灌溉和气候条件下提高枣椰树产量和水分生产率的智能方法

IF 5.7 3区 环境科学与生态学 Q1 WATER RESOURCES
Hossein Dehghanisanij, Nader Salamati, Somayeh Emami, Hojjat Emami, Haruyuki Fujimaki
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引用次数: 0

摘要

干旱、用水需求增加、水资源减少和管理不善给社会带来了严重风险。因此,必须提供适当的解决方案来提高水生产力(WP)。作为一项研究内容,本研究提出了一种混合机器学习方法,并探讨了该方法在估算不同地表下滴灌(SDI)条件下枣椰树作物产量和水分生产率方面的潜力。比较了 SDI 系统中 125%(T1)、100%(T2)和 75%(T3)三个需水量水平的施水量。所提出的 ACVO-ANFIS 方法由反玉米螟优化算法(ACVO)和自适应神经模糊推理系统(ANFIS)组成。由于在估算可湿性粉剂和产量时,灌溉因素、气候和作物特性的影响并不相同,因此在估算阶段应衡量这些因素的重要性。为实现这一目标,ACVO-ANFIS 根据灌溉因素、气候和作物特征采用了八种不同的特征组合模型。所提出的方法在一个基准数据集上进行了评估,该数据集包含位于伊朗胡齐斯坦省东南部的贝赫巴汉农业研究站的林地信息。结果表明,与 T1 和 T2 处理相比,T3 处理的棕榈作物产量分别提高了 3.91% 和 1.31%,可湿性粉剂分别提高了 35.50 公斤/立方米和 20.40 公斤/立方米。T3 处理的施水量为 7528.80 立方米/公顷,与 T1 和 T2 处理相比,施水量分别减少了 5019.20 和 2509.6 立方米/公顷。ACVO-ANFIS 方法的建模结果显示,在包含作物品种、灌溉(SDI 系统需水量的 75%)和有效降雨等因素的模型中,RMSE = 0.005,δ = 0.603,AICC = 183.25。结果证实,ACVO-ANFIS 在性能标准方面优于其同行。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

An intelligent approach to improve date palm crop yield and water productivity under different irrigation and climate scenarios

An intelligent approach to improve date palm crop yield and water productivity under different irrigation and climate scenarios

An intelligent approach to improve date palm crop yield and water productivity under different irrigation and climate scenarios

An intelligent approach to improve date palm crop yield and water productivity under different irrigation and climate scenarios

Drought, rising demand for water, declining water resources, and mismanagement have put society at serious risk. Therefore, it is essential to provide appropriate solutions to increase water productivity (WP). As an element of research, this study presents a hybrid machine learning approach and investigates its potential for estimating date palm crop yield and WP under different levels of subsurface drip irrigation (SDI). The amount of applied water in the SDI system was compared at three levels of 125% (T1), 100% (T2), and 75% (T3) of water requirement. The proposed ACVO-ANFIS approach is composed of an anti-coronavirus optimization algorithm (ACVO) and an adaptive neuro-fuzzy inference system (ANFIS). Since the effect of irrigation factors, climate, and crop characteristics are not equal in estimating the WP and yield, the importance of these factors should be measured in the estimation phase. To fulfill this aim, ACVO-ANFIS employed eight different feature combination models based on irrigation factors, climate, and crop characteristics. The proposed approach was evaluated on a benchmark dataset that contains information about the groves of Behbahan agricultural research station located in southeast Khuzestan, Iran. The results explained that the treatment T3 advanced data palm crop yield by 3.91 and 1.31%, and WP by 35.50 and 20.40 kg/m3, corresponding to T1 and T2 treatments, respectively. The amount of applied water in treatment T3 was 7528.80 m3/ha, which suggests a decrease of 5019.20 and 2509.6 m3/ha of applied water compared to the T1 and T2 treatments. The modeling results of the ACVO-ANFIS approach using a model with factors of crop variety, irrigation (75% water requirement of SDI system), and effective rainfall achieved RMSE = 0.005, δ = 0.603, and AICC = 183.25. The results confirmed that the ACVO-ANFIS outperformed its counterparts in terms of performance criteria.

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来源期刊
Applied Water Science
Applied Water Science WATER RESOURCES-
CiteScore
9.90
自引率
3.60%
发文量
268
审稿时长
13 weeks
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