Modelling the Temperature Inside a Greenhouse Tunnel

Keegan Hull, P. van Schalkwyk, Mosima Mabitsela, E. Phiri, M.J. Booysen
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Abstract

Climate-change-induced unpredictable weather patterns are adversely affecting global agricultural productivity, posing a significant threat to sustainability and food security, particularly in developing regions. Wealthier nations can invest substantially in measures to mitigate climate change’s impact on food production, but economically disadvantaged countries face challenges due to limited resources and heightened susceptibility to climate change. To enhance climate resilience in agriculture, technological solutions such as the Internet of Things (IoT) are being explored. This paper introduces a digital twin as a technological solution for monitoring and controlling temperatures in a greenhouse tunnel situated in Stellenbosch, South Africa. The study incorporates an aeroponics trial within the tunnel, analysing temperature variations caused by the fan and wet wall temperature regulatory systems. The research develops an analytical model and employs a support vector regression algorithm as an empirical model, successfully achieving accurate predictions. The analytical model demonstrated a root mean square error (RMSE) of 2.93 °C and an R2 value of 0.8, while the empirical model outperformed it with an RMSE of 1.76 °C and an R2 value of 0.9 for a one-hour-ahead simulation. Potential applications and future work using these modelling techniques are then discussed.
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温室隧道内的温度建模
气候变化引起的不可预测的天气模式正在对全球农业生产力产生不利影响,对可持续性和粮食安全构成重大威胁,特别是在发展中地区。较富裕的国家可以投入大量资金,采取措施减轻气候变化对粮食生产的影响,但经济落后的国家由于资源有限、更容易受到气候变化的影响而面临挑战。为了提高农业的气候适应能力,人们正在探索物联网(IoT)等技术解决方案。本文介绍了一种数字孪生技术解决方案,用于监测和控制南非斯泰伦博斯温室隧道的温度。研究结合了隧道内的气生栽培试验,分析了风扇和湿墙温度调节系统引起的温度变化。研究开发了一个分析模型,并采用支持向量回归算法作为经验模型,成功实现了精确预测。分析模型的均方根误差(RMSE)为 2.93 °C,R2 值为 0.8,而经验模型的均方根误差(RMSE)为 1.76 °C,R2 值为 0.9。随后讨论了这些建模技术的潜在应用和未来工作。
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