We present a differentiable greenhouse simulation model based on physical processes whose parameters can be obtained by training from real data. The physics-based simulation model is fully interpretable and is able to do state prediction for both climate and crop dynamics in the greenhouse over very a long time horizon. The model works by constructing a system of linear differential equations and solving them to obtain the next state. We propose a procedure to solve the differential equations, handle the problem of missing unobservable states in the data, and train the model efficiently. Our experiment shows the procedure is effective. The model improves significantly after training and can simulate a greenhouse that grows cucumbers accurately.
翻译:我们提出了一个基于物理过程的不同温室模拟模型,这些物理过程的参数可以通过实际数据的培训获得。物理模拟模型完全可以解释,能够在很长的时期内对温室的气候和作物动态进行状态预测。模型通过建立一个线性差分方程系统并解决它们以获得下一个状态。我们提出了一个程序来解决差异方程,处理数据中缺少不可观察状态的问题,并有效地培训模型。我们的实验表明程序是有效的。模型在培训后大有改进,可以模拟一个生长黄瓜的温室。