4.7 Article

Bio-inspired and artificial intelligence enabled hydro-economic model for diversified agricultural management

Journal

AGRICULTURAL WATER MANAGEMENT
Volume 269, Issue -, Pages -

Publisher

ELSEVIER
DOI: 10.1016/j.agwat.2022.107638

Keywords

Agronomy; Artificial Intelligence; Crop Diversification; Hydro-economics; Optimisation

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Considering the neoteric phenomena such as climate change and scarce resources, there is a need to improve resource utilization efficiencies in agriculture and reorient agroecosystems. This study proposes a combinatorial optimisation approach using bio-inspired optimization algorithms to allocate land optimally, considering multiple objectives. Through a case study of a district in India, the results demonstrate that the Multi-objective Genetic Algorithm (MOGA) is more effective in optimizing agricultural resources management compared to other algorithms. The proposed framework shows significant improvements in profits, crop yield, and water usage reduction.
Neoteric phenomena such as climate change, scarce water availability and excessive fertilizer usage necessitate an augmentation of resource utilisation efficiencies in the agricultural sector. There is a need to reorient the agroecosystems to curb stress on environmental resources while meeting rising socio-economic objectives under changing hydro-climatic conditions. Considering this, optimal land allocation for diversified agriculture is essential. We propose a combinatorial optimisation approach for land allocation considering agronomic, socio-economic, environmental and hydro-climatic objectives using bio-inspired optimization algorithms. The sto-chastic approach tackles the problem of optimal agricultural land allocation for crops in a multidimensional context by simultaneously addressing the conflicting goals of farm-level risk management as well as district-level contingency planning. The efficiencies and sensitivity of the proposed framework are assessed through a case study of the Dharwad district in Karnataka, India using the data (water and fertilizer consumption and cost, crop type, cultivable land, man and machine hours, etc.) from the year 2019-2020. Results indicate that Multi-objective Genetic Algorithm (MOGA) is more capable of optimising agricultural resources management by suggesting optimal land allocation for diversified crop planning. Although Cuckoo Search (CS) and Particle Search Optimisation (PSO) also produced productive Pareto fronts, they were observed to be less effective than MOGA. The annual increase in profits and crop yield obtained using MOGA are 103% and 97% respectively, while water usage is reduced by 5% compared to the conventional routines in Dharwad. The proposed hydro-agronomic decision support framework (DSF) can be utilised to assist the AI-enabled crop planning process for the sustainable management of agroecosystems.

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