Adaptive Optimal Control of Lettuce Growth in Greenhouses Using Sensitivity-Driven Measurement Collection
Description
This paper presents a novel workflow for the design of an adaptive model-based
controller to optimize the time and energy consumption for plant cultivation combined with on-
line analysis and estimation of model parameters based on scarce data. A non-linear model of
lettuce growth is subject to sensitivity analysis of selected parameters to determine the effective
sequence and time horizon of infrequent data sampling of plant physiological properties. In the
designed measurement campaign, the parameter estimation is performed to update the model
parameter space, improving the accuracy of plant growth predictions and control efficiency.
The implementation of run-time-updated model in a predictive control framework leads to
minimization of the energy-related cost and the full-growth time of the plant. Simulations show
promising results in minimizing the time required to the desired plant yield.
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