SYAIMar 4, 2024

Canonical Form of Datatic Description in Control Systems

arXiv:2403.01768v14 citationsh-index: 6ACC
Originality Incremental advance
AI Analysis

This work addresses the lack of standardization in data-based system representation for data-driven control, offering a foundational step that could benefit control system designers, though it appears incremental in scope.

The paper introduces the concept of canonical data forms for data-driven control systems to standardize data representation, aiming to improve controller design by reducing instability and enhancing training efficiency, with demonstrated advantages in specific control systems.

The design of feedback controllers is undergoing a paradigm shift from modelic (i.e., model-driven) control to datatic (i.e., data-driven) control. Canonical form of state space model is an important concept in modelic control systems, exemplified by Jordan form, controllable form and observable form, whose purpose is to facilitate system analysis and controller synthesis. In the realm of datatic control, there is a notable absence in the standardization of data-based system representation. This paper for the first time introduces the concept of canonical data form for the purpose of achieving more effective design of datatic controllers. In a control system, the data sample in canonical form consists of a transition component and an attribute component. The former encapsulates the plant dynamics at the sampling time independently, which is a tuple containing three elements: a state, an action and their corresponding next state. The latter describes one or some artificial characteristics of the current sample, whose calculation must be performed in an online manner. The attribute of each sample must adhere to two requirements: (1) causality, ensuring independence from any future samples; and (2) locality, allowing dependence on historical samples but constrained to a finite neighboring set. The purpose of adding attribute is to offer some kinds of benefits for controller design in terms of effectiveness and efficiency. To provide a more close-up illustration, we present two canonical data forms: temporal form and spatial form, and demonstrate their advantages in reducing instability and enhancing training efficiency in two datatic control systems.

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