Reference:
A. Sadowska,
P.-J. van Overloop,
J.M. Maestre, and
B. De Schutter,
"Human-in-the-loop control of an irrigation canal using time instant
optimization model predictive control," Proceedings of the 2015
European Control Conference, Linz, Austria, pp. 3279-3284, July
2015.
Abstract:
In the paper we discuss the recently introduced Mobile Model
Predictive Control (Mobile MPC) approach for an irrigation canal.
Mobile MPC is a configuration of MPC that explicitly incorporates the
role of the human operator traveling between the gates as ordered by a
remote centralized controller. The operator provides the controller
with up-to-date measurements from the locations visited and acts as
the actuator as required by the remote controller. Mobile MPC provides
a solution in between fully manual and fully automatic canal
operation, as the first one may give poor performance and the second
one might be impracticable in some situations, where it is not
possible to rely on the equipment installed in the field. In the
current paper we improve the performance of the original Mobile MPC
approach by allowing the controller to decide the exact time instants
when the operator should arrive at a specific gate and change the
gate's settings as well as we include a penalty in the objective
function for the controller to minimize the workload of the human
operator. We show that the new approach yields enhanced performance in
comparison to the previous method, and we demonstrate the benefits of
the new method as opposed to the previous one in a case study.