Model Embedded DRL for Intelligent Greenhouse Control

12/01/2019
by   Tinghao Zhang, et al.
13

Greenhouse environment is the key to influence crops production. However, it is difficult for classical control methods to give precise environment setpoints, such as temperature, humidity, light intensity and carbon dioxide concentration for greenhouse because it is uncertain nonlinear system. Therefore, an intelligent close loop control framework based on model embedded deep reinforcement learning (MEDRL) is designed for greenhouse environment control. Specifically, computer vision algorithms are used to recognize growing periods and sex of crops, followed by the crop growth models, which can be trained with different growing periods and sex. These model outputs combined with the cost factor provide the setpoints for greenhouse and feedback to the control system in real-time. The whole MEDRL system has capability to conduct optimization control precisely and conveniently, and costs will be greatly reduced compared with traditional greenhouse control approaches.

READ FULL TEXT

page 2

page 4

research
04/09/2022

MR-iNet Gym: Framework for Edge Deployment of Deep Reinforcement Learning on Embedded Software Defined Radio

Dynamic resource allocation plays a critical role in the next generation...
research
03/24/2022

Deep reinforcement learning for optimal well control in subsurface systems with uncertain geology

A general control policy framework based on deep reinforcement learning ...
research
07/18/2021

Co-designing Intelligent Control of Building HVACs and Microgrids

Building loads consume roughly 40 countries, a significant part of which...
research
08/04/2021

High Performance Across Two Atari Paddle Games Using the Same Perceptual Control Architecture Without Training

Deep reinforcement learning (DRL) requires large samples and a long trai...
research
05/24/2018

Intelligent Trainer for Model-Based Reinforcement Learning

Model-based deep reinforcement learning (DRL) algorithm uses the sampled...

Please sign up or login with your details

Forgot password? Click here to reset