Abstract
The quantity of land covered by various crops in a specific time span, referred to as a cropping pattern, dictates the level of agricultural production. However, retrieval of this information at a landscape scale can be challenging, especially when high spatial resolution imagery is not available. This study hypothesized that utilizing the unique advantages of multi-date and medium spatial resolution freely available Sentinel-2 (S2) reflectance bands (S2 bands), their vegetation indices (VIs) and vegetation phenology (VP) derivatives, and Sentinel-1 (S1) backscatter data would improve cropping pattern mapping in heterogeneous landscapes using robust machine learning algorithms, i.e., the guided regularized random forest (GRRF) for variable selection and the random forest (RF) for classification. This study’s objective was to map cropping patterns within three sub-counties in Murang’a County, a typical African smallholder heterogeneous farming area, in Kenya. Specifically, the performance of eight classification scenarios for mapping cropping patterns was compared, namely: (i) only S2 bands; (ii) S2 bands and VIs; (iii) S2 bands and VP; (iv) S2 bands and S1; (v) S2 bands, VIs, and S1; (vi) S2 bands, VP, and S1; (vii) S2 bands, VIs, and VP; and (viii) S2 bands, VIs, VP, and S1. Reference data of the dominant cropping patterns and non-croplands were collected. The GRRF algorithm was used to select the optimum variables in each scenario, and the RF was used to perform the classification for each scenario. The highest overall accuracy was 94.33% with Kappa of 0.93, attained using the GRRF-selected variables of scenario (v) S2, VIs, and S1. Furthermore, McNemar’s test of significance did not show significant differences (p ≤ 0.05) among the tested scenarios. This study demonstrated the strength of GRRF in selecting the most important variables and the synergetic advantage of S2 and S1 derivatives to accurately map cropping patterns in small-scale farming-dominated landscapes. Consequently, the cropping pattern mapping approach can be used in other sites of relatively similar agro-ecological conditions. Additionally, these results can be used to understand the sustainability of food systems and to model the abundance and spread of crop insect pests, diseases, and pollinators.
Highlights
The quantity of land covered by various crops in a specific time span, referred to as a cropping pattern [1], dictates the level of global agricultural production, which in turn influences the agricultural economy [2]
The present study focused on two types of cropping patterns, i.e., monocropping patterns and mixed cropping patterns, that are commonly practiced in the study area
This study investigated the synergetic advantage of integrating multi-date freely available medium spatial resolution S2 bands, their vegetation indices (VIs) and vegetation phenology (VP) derivatives, and S1 backscatter data for mapping cropping patterns using guided regularized random forest (GRRF) and random forest (RF) machine learning algorithms for relevant variable selection and cropping pattern classification, respectively, in an agronatural heterogeneous landscape in Kenya
Summary
The quantity of land covered by various crops in a specific time span, referred to as a cropping pattern [1], dictates the level of global agricultural production, which in turn influences the agricultural economy [2]. The types of cropping patterns can include monocropping, crop rotation, and intercropping [5], which are practiced for various reasons such as environmental conditions, profitability, adaptability to changing conditions, tolerance and resistance to insect pests and diseases, the requirement for specific technologies during growing or harvesting, and other elements in the production system [6]. These cropping patterns possess several benefits and drawbacks. The present study focused on two types of cropping patterns, i.e., monocropping patterns and mixed cropping patterns, that are commonly practiced in the study area
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