Abstract

Closed production systems, such as plant factories and vertical farms, have emerged to ensure a sustainable supply of fresh food, to cope with the increasing consumption of natural resource for the growing population. In a plant factory, a microclimate model is one of the direct control components of a whole system. In order to better realize the dynamic regulation for the microclimate model, energy-saving and consumption reduction, it is necessary to optimize the environmental parameters in the plant factory, and thereby to determine the influencing factors of atmosphere control systems. Therefore, this study aims to identify accurate microclimate models, and further to predict temperature change based on the experimental data, using the classification and regression trees (CART) algorithm. A random forest theory was used to represent the temperature control system. A mechanism model of the temperature control system was proposed to improve the performance of the plant factories. In terms of energy efficiency, the main influencing factors on temperature change in the plant factories were obtained, including the temperature and air volume flow of the temperature control device, as well as the internal relative humidity. The generalization error of the prediction model can reach 0.0907. The results demonstrated that the proposed model can present the quantitative relationship and prediction function. This study can provide a reference for the design of high-precision environmental control systems in plant factories. Keywords: plant factory, temperature control system, mechanism simulation, random forest, cart model, generalization error DOI: 10.25165/j.ijabe.20211403.6114 Citation: Zhang M Q, Zhang W, Chen X Y, Wang F, Wang H, Zhang J S, et al. Modeling and simulation of temperature control system in plant factory using energy balance. Int J Agric & Biol Eng, 2021; 14(3): 66–75.

Highlights

  • Plant factories, one type of closed system, are designed to maximize production density, productivity, and use the efficiency of natural resource to alleviate the local scarcity of urban food supply

  • The prediction of Random Forest Regression was achieved through the sklearn module. 75% of all data was randomly selected as the training set to train a prediction model using the random forest algorithm (CART)

  • A high-performance system model is lacking for the optimal control of plant factories

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Summary

Introduction

One type of closed system, are designed to maximize production density, productivity, and use the efficiency of natural resource to alleviate the local scarcity of urban food supply. This high-level agricultural production approach can efficiently adjust the internal microclimate to a more suitable state for plant growth, thereby improving the quality and yield of crops[1]. Establish a highly accurate microclimate model becomes a great challenge for the subsequent procedures in a plant factory, on the precise control of crop growth, quantitative management, environmental atmosphere optimization, saving energy, and reducing resource consumption[11,12,13]

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