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参照被忽视和未充分利用的作物品种评估土地适宜性方法:一项范围综述

Evaluation of Land Suitability Methods with Reference to Neglected and Underutilised Crop Species: A Scoping Review.

作者信息

Mugiyo Hillary, Chimonyo Vimbayi G P, Sibanda Mbulisi, Kunz Richard, Masemola Cecilia R, Modi Albert T, Mabhaudhi Tafadzwanashe

机构信息

Centre for Transformative Agricultural and Food Systems, School of Agricultural, Earth & Environmental Sciences, University of KwaZulu-Natal, P/Bag X01, Pietermaritzburg 3209, South Africa.

Department of Geography, Environmental Studies and Tourism, University of the Western Cape, Private Bag X17, Bellville 7535, South Africa.

出版信息

Land (Basel). 2021 Jan 28;10(2):125. doi: 10.3390/land10020125.

Abstract

In agriculture, land use and land classification address questions such as "where", "why" and "when" a particular crop is grown within a particular agroecology. To date, there are several land suitability analysis (LSA) methods, but there is no consensus on the best method for crop suitability analysis. We conducted a scoping review to evaluate methodological strategies for LSA. Secondary to this, we assessed which of these would be suitable for neglected and underutilised crop species (NUS). The review classified LSA methods reported in articles as traditional (26.6%) and modern (63.4%). Modern approaches, including multi-criteria decision-making (MCDM) methods such as analytical hierarchy process (AHP) (14.9%) and fuzzy methods (12.9%); crop simulation models (9.9%) and machine learning related methods (25.7%) are gaining popularity over traditional methods. The MCDM methods, namely AHP and fuzzy, are commonly applied to LSA while crop models and machine learning related methods are gaining popularity. A total of 67 parameters from climatic, hydrology, soil, socio-economic and landscape properties are essential in LSA. Unavailability and the inclusion of categorical datasets from social sources is a challenge. Using big data and Internet of Things (IoT) improves the accuracy and reliability of LSA methods. The review expects to provide researchers and decision-makers with the most robust methods and standard parameters required in developing LSA for NUS. Qualitative and quantitative approaches must be integrated into unique hybrid land evaluation systems to improve LSA.

摘要

在农业中,土地利用和土地分类解决诸如特定作物在特定农业生态系统中的“种植地点”“种植原因”和“种植时间”等问题。迄今为止,有几种土地适宜性分析(LSA)方法,但对于作物适宜性分析的最佳方法尚无共识。我们进行了一项范围审查,以评估LSA的方法策略。其次,我们评估了其中哪些方法适用于被忽视和未充分利用的作物品种(NUS)。该审查将文章中报道的LSA方法分为传统方法(26.6%)和现代方法(63.4%)。现代方法,包括多准则决策(MCDM)方法,如层次分析法(AHP)(14.9%)和模糊方法(12.9%);作物模拟模型(9.9%)和机器学习相关方法(25.7%)比传统方法更受欢迎。MCDM方法,即AHP和模糊方法,通常应用于LSA,而作物模型和机器学习相关方法越来越受欢迎。LSA总共需要来自气候、水文、土壤、社会经济和景观属性的67个参数。社会来源的分类数据集的不可用性和纳入是一个挑战。使用大数据和物联网(IoT)提高了LSA方法的准确性和可靠性。该审查期望为研究人员和决策者提供开发NUS的LSA所需的最可靠方法和标准参数。定性和定量方法必须整合到独特的混合土地评估系统中,以改进LSA。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/7e32/7616268/58398efc3809/EMS197512-f001.jpg

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