Salvato in:
Dettagli Bibliografici
Autori principali: Zubair, Md, Salim, Md. Shahidul, Rahman, Mehrab Mustafy, Basher, Mohammad Jahid Ibna, Imran, Shahin, Sarker, Iqbal H.
Natura: Preprint
Pubblicazione: 2024
Soggetti:
Accesso online:https://arxiv.org/abs/2401.11410
Tags: Aggiungi Tag
Nessun Tag, puoi essere il primo ad aggiungerne!!
_version_ 1866914866779914240
author Zubair, Md
Salim, Md. Shahidul
Rahman, Mehrab Mustafy
Basher, Mohammad Jahid Ibna
Imran, Shahin
Sarker, Iqbal H.
author_facet Zubair, Md
Salim, Md. Shahidul
Rahman, Mehrab Mustafy
Basher, Mohammad Jahid Ibna
Imran, Shahin
Sarker, Iqbal H.
contents Agriculture plays a fundamental role in driving economic growth and ensuring food security for populations around the world. Although labor-intensive agriculture has led to steady increases in food grain production in many developing countries, it is frequently challenged by adverse weather conditions, including heavy rainfall, low temperatures, and drought. These factors substantially hinder food production, posing significant risks to global food security. In order to have a profitable, sustainable, and farmer-friendly agricultural practice, this paper proposes a context-based crop recommendation system powered by a weather forecast model. For implementation purposes, we have considered the whole territory of Bangladesh. With extensive evaluation, the multivariate Stacked Bi-LSTM (three Bi-LSTM layers with a time Distributed layer) Network is employed as the weather forecasting model. The proposed weather model can forecast Rainfall, Temperature, Humidity, and Sunshine for any given location in Bangladesh with an average R-Squared value of 0.9824, and the model outperforms other state-of-the-art LSTM models. These predictions guide our system in generating viable farming decisions. Additionally, our full-fledged system is capable of alerting the farmers about extreme weather conditions so that preventive measures can be undertaken to protect the crops. Finally, the system is also adept at making knowledge-based crop suggestions for flood and drought-prone regions.
format Preprint
id arxiv_https___arxiv_org_abs_2401_11410
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Agricultural Recommendation System based on Deep Learning: A Multivariate Weather Forecasting Approach
Zubair, Md
Salim, Md. Shahidul
Rahman, Mehrab Mustafy
Basher, Mohammad Jahid Ibna
Imran, Shahin
Sarker, Iqbal H.
Machine Learning
Artificial Intelligence
Agriculture plays a fundamental role in driving economic growth and ensuring food security for populations around the world. Although labor-intensive agriculture has led to steady increases in food grain production in many developing countries, it is frequently challenged by adverse weather conditions, including heavy rainfall, low temperatures, and drought. These factors substantially hinder food production, posing significant risks to global food security. In order to have a profitable, sustainable, and farmer-friendly agricultural practice, this paper proposes a context-based crop recommendation system powered by a weather forecast model. For implementation purposes, we have considered the whole territory of Bangladesh. With extensive evaluation, the multivariate Stacked Bi-LSTM (three Bi-LSTM layers with a time Distributed layer) Network is employed as the weather forecasting model. The proposed weather model can forecast Rainfall, Temperature, Humidity, and Sunshine for any given location in Bangladesh with an average R-Squared value of 0.9824, and the model outperforms other state-of-the-art LSTM models. These predictions guide our system in generating viable farming decisions. Additionally, our full-fledged system is capable of alerting the farmers about extreme weather conditions so that preventive measures can be undertaken to protect the crops. Finally, the system is also adept at making knowledge-based crop suggestions for flood and drought-prone regions.
title Agricultural Recommendation System based on Deep Learning: A Multivariate Weather Forecasting Approach
topic Machine Learning
Artificial Intelligence
url https://arxiv.org/abs/2401.11410