2023
DOI: 10.9734/jerr/2023/v24i12858
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Predicting Crop Yield Using Deep Learning and Remote Sensing

Abstract: The art of predicting crop production is done before the crop is harvested. Crop output forecasts will help people make timely judgments concerning food policy, prices in markets, import and export laws, and acceptable warehousing. It is possible to reduce the socioeconomic effects of crop loss brought on by a natural disaster, such as a flood or a drought, and to organize humanitarian food assistance. It has been suggested that deep learning, which lets the model to automatically extricate features and learn … Show more

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Cited by 8 publications
(2 citation statements)
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“…This phase prioritized information accessibility rather than fostering interaction and collaboration. Websites were tailored for desktop computers and lacked optimization for mobile devices [6]. Web 2.0: Emerging in the early 2000s, Web 2.0 introduced more dynamic and interactive websites, facilitating two-way communication and collaboration among users.…”
Section: Literature Review a Examining The Transformation Of The Inte...mentioning
confidence: 99%
“…This phase prioritized information accessibility rather than fostering interaction and collaboration. Websites were tailored for desktop computers and lacked optimization for mobile devices [6]. Web 2.0: Emerging in the early 2000s, Web 2.0 introduced more dynamic and interactive websites, facilitating two-way communication and collaboration among users.…”
Section: Literature Review a Examining The Transformation Of The Inte...mentioning
confidence: 99%
“…By leveraging data analytics and visualization, decision-makers can evaluate historical performance, identify patterns, and predict future outcomes. This data-driven approach minimizes subjective biases and enhances the accuracy and effectiveness of decision-making processes [9] . 3.…”
Section: Data-driven Decision-making: Bi Enables Decision-mentioning
confidence: 99%