RETRACTED ARTICLE: Forecast of agricultural water resources demand based on particle swarm algorithm
Open Access
- 7 November 2021
- journal article
- retracted article
- Published by Taylor & Francis Ltd in Acta Agriculturae Scandinavica, Section B — Soil & Plant Science
- Vol. 72 (1), 30-42
- https://doi.org/10.1080/09064710.2021.1990386
Abstract
The planning and management of water resources are becoming more and more important, and the forecast of water demand as the prerequisite and foundation of the entire planning has become a very important task in agricultural development. This paper combines the particle swarm algorithm to construct the agricultural water resource demand forecasting model, analyzes the shortcomings of the traditional particle swarm algorithm, and makes appropriate improvements to the quantum particle swarm algorithm. Moreover, this paper constructs the functional structure of the agricultural water resource demand forecast model based on the forecast demand of water resources, and analyzes the application process of the particle swarm algorithm in the system of this paper. After the model is constructed, the performance of the model is verified, and the simulation test is designed to evaluate the effect of system forecast with actual data. At the same time, this paper uses the model constructed in this paper to analyze the factors affecting water resources forecast demand. From the results of the experimental analysis, it can be seen that the model constructed in this paper is more effective in the forecast of water resources demand.Keywords
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