Neural Computing and Applications, Volume 35, Issue 16, Pages 11701-11711 , 01/06/2023
Reinforcement control with fuzzy-rules emulated network for robust-optimal drug-dosing of cancer dynamics
Abstract
In this article, a nonlinear mathematical model of the biological phenomena in chemotherapy cancer treatment is considered as a class of unknown discrete-time systems when the input data and the measured output are only available. The input data are the drug administration represented as the control effort and the output is the tumor cells population. As a result, the actor-critic architecture is constructed without the full-state observer. Two sets of IF-THEN rules are utilized for fuzzy rules emulated networks by human knowledge according to the pharmacokinetic and pharmacodynamic details. The learning laws are derived from the concept of the incoherent reward function. Thus, the convergence of the internal signals and the robustness are accomplished by the theoretical and numerical results. Furthermore, the comparative results are given to demonstrate the effectiveness of the proposed scheme.
Document Type
Article
Source Type
Journal
Keywords
Chemotherapy drug administrationFuzzy-neural networkReinforcement learningRobust-optimal control
ASJC Subject Area
Computer Science : SoftwareComputer Science : Artificial Intelligence