AINEMar 1, 2021

Knowledge-Guided Dynamic Systems Modeling: A Case Study on Modeling River Water Quality

arXiv:2103.00792v12 citations
Originality Incremental advance
AI Analysis

This work addresses the challenge of building accurate models for dynamic systems like river water quality, offering an incremental improvement over purely knowledge-driven or data-driven approaches.

The paper tackles the problem of modeling complex dynamic systems by proposing a genetic model revision framework that combines prior knowledge with data-driven revisions, achieving higher modeling accuracy than existing methods in a river water quality case study.

Modeling real-world phenomena is a focus of many science and engineering efforts, such as ecological modeling and financial forecasting, to name a few. Building an accurate model for complex and dynamic systems improves understanding of underlying processes and leads to resource efficiency. Towards this goal, knowledge-driven modeling builds a model based on human expertise, yet is often suboptimal. At the opposite extreme, data-driven modeling learns a model directly from data, requiring extensive data and potentially generating overfitting. We focus on an intermediate approach, model revision, in which prior knowledge and data are combined to achieve the best of both worlds. In this paper, we propose a genetic model revision framework based on tree-adjoining grammar (TAG) guided genetic programming (GP), using the TAG formalism and GP operators in an effective mechanism to incorporate prior knowledge and make data-driven revisions in a way that complies with prior knowledge. Our framework is designed to address the high computational cost of evolutionary modeling of complex systems. Via a case study on the challenging problem of river water quality modeling, we show that the framework efficiently learns an interpretable model, with higher modeling accuracy than existing methods.

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