Applying Machine Learning to Deterministic Pump-Pipe System
Version 1.0.1 (129 KB) by
S. P. Vasekar (Geca Adj. Prof.)
The understanding of ML fundamentals is also useful to apply it to well-defined deterministic systems where results can be validated.
Machine learning (ML) is widely used to model complex, non-linear relationships in data, especially when dealing with uncertainties or measurement errors. However, to develop an understanding of ML fundamentals, it is also useful to apply it to well-defined deterministic systems where results can be validated against known physical models. This document outlines a structured workflow where ML is applied to a simulated centrifugal pump and pipeline system. The goal is to train a neural network using synthetic data and verify its predictive capability against the original simulation results.
Cite As
S. P. Vasekar (Geca Adj. Prof.) (2026). Applying Machine Learning to Deterministic Pump-Pipe System (https://ch.mathworks.com/matlabcentral/fileexchange/180269-applying-machine-learning-to-deterministic-pump-pipe-system), MATLAB Central File Exchange. Retrieved .
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