<mods:mods version="3.3" xsi:schemaLocation="http://www.loc.gov/mods/v3 http://www.loc.gov/standards/mods/v3/mods-3-3.xsd" xmlns:mods="http://www.loc.gov/mods/v3" xmlns:xsi="http://www.w3.org/2001/XMLSchema-instance"><mods:titleInfo><mods:title>Characterizing and mapping cropping patterns in a complex agro-ecosystem: An iterative participatory mapping procedure using machine learning algorithms and MODIS vegetation indices</mods:title></mods:titleInfo><mods:name type="personal"><mods:namePart type="given">G L</mods:namePart><mods:namePart type="family">Feyisa</mods:namePart><mods:role><mods:roleTerm type="text">author</mods:roleTerm></mods:role></mods:name><mods:name type="personal"><mods:namePart type="given">L K</mods:namePart><mods:namePart type="family">Palao</mods:namePart><mods:role><mods:roleTerm type="text">author</mods:roleTerm></mods:role></mods:name><mods:name type="personal"><mods:namePart type="given">A</mods:namePart><mods:namePart type="family">Nelson</mods:namePart><mods:role><mods:roleTerm type="text">author</mods:roleTerm></mods:role></mods:name><mods:name type="personal"><mods:namePart type="given">M K</mods:namePart><mods:namePart type="family">Gumma</mods:namePart><mods:role><mods:roleTerm type="text">author</mods:roleTerm></mods:role></mods:name><mods:name type="personal"><mods:namePart type="given">A</mods:namePart><mods:namePart type="family">Paliwal</mods:namePart><mods:role><mods:roleTerm type="text">author</mods:roleTerm></mods:role></mods:name><mods:name type="personal"><mods:namePart type="given">K T</mods:namePart><mods:namePart type="family">Win</mods:namePart><mods:role><mods:roleTerm type="text">author</mods:roleTerm></mods:role></mods:name><mods:name type="personal"><mods:namePart type="given">K H</mods:namePart><mods:namePart type="family">Nge</mods:namePart><mods:role><mods:roleTerm type="text">author</mods:roleTerm></mods:role></mods:name><mods:name type="personal"><mods:namePart type="given">D E</mods:namePart><mods:namePart type="family">Johnson</mods:namePart><mods:role><mods:roleTerm type="text">author</mods:roleTerm></mods:role></mods:name><mods:abstract>Accurate and up-to-date spatial agricultural information is essential for applications including agro-environmental&#13;
assessment, crop management, and appropriate targeting of agricultural technologies. There is growing&#13;
research interest in spatial analysis of agricultural ecosystems applying satellite remote sensing technologies.&#13;
However, usability of information generated from many of remotely sensed data is often constrained by accuracy&#13;
problems. This is of particular concern in mapping complex agro-ecosystems in countries where small farm&#13;
holdings are dominated by diverse crop types. This study is a contribution to the ongoing efforts towards&#13;
overcoming accuracy challenges faced in remote sensing of agricultural ecosystems. We applied time-series&#13;
analysis of vegetation indices (Normalized Difference Vegetation Index (NDVI) and Enhanced Vegetation Index&#13;
(EVI)) derived from the Moderate Resolution Imaging Spectrometer (MODIS) sensor to detect seasonal patterns&#13;
of irrigated and rainfed cropping patterns in five townships in the Central Dry Zone of Myanmar, which is an&#13;
important agricultural region of the country has been poorly mapped with respect to cropping practices. To&#13;
improve mapping accuracy and map legend completeness, we implemented a combination of (i) an iterative&#13;
participatory approach to field data collection and classification, (ii) the identification of appropriate size and&#13;
types of predictor variables (VIs), and (iii) evaluation of the suitability of three Machine Learning algorithms:&#13;
Support Vector Machine (SVM), Random Forest (RF), and C5.0 algorithms under varying training sample sizes.&#13;
Through these procedures, we were able to progressively improve accuracy and achieve maximum overall accuracy&#13;
of 95% When a small sized training dataset was used, accuracy achieved by RF was significantly higher&#13;
compared to SVM and C5.0 (P &lt; 0.01), but as sample size increased, accuracy differences among the three&#13;
machine learning algorithms diminished. Accuracy achieved by use of NDVI was consistently better than that of&#13;
EVI (P &lt; 0.01). The maximum overall accuracy was achieved using RF and 8-days NDVI composites for three&#13;
years of remote sensing data. In conclusion, our findings highlight the important role of participatory classification,&#13;
especially in areas where cropping systems are highly diverse and differ over space and time. We also&#13;
show that the choice of classifiers and size of predictor variables are essential and complementary to the participatory&#13;
mapping approach in achieving desired accuracy of cropping pattern mapping in areas where other&#13;
sources of spatial information are scarce.</mods:abstract><mods:classification authority="lcc">Participatory Modeling</mods:classification><mods:classification authority="lcc">GIS Techniques/Remote Sensing</mods:classification><mods:originInfo><mods:dateIssued encoding="iso8061">2020-06</mods:dateIssued></mods:originInfo><mods:originInfo><mods:publisher>Elsevier</mods:publisher></mods:originInfo><mods:genre>Article</mods:genre></mods:mods>