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Tensor-Structured Statistical Process Control

A technical monograph on high-dimensional process monitoring using tensor methods, including theory, implementation, simulation, ARL and detection-delay analysis, and comparative evaluation against vectorized PCA baselines.

Format Technical Monograph
Focus Tensor SPC, Simulation, Monitoring
Access Open PDF + DOI

Abstract

Publication Summary

Tensor-structured statistical process control extends classical multivariate monitoring by preserving multiway structure rather than collapsing observations into vectorized forms. This work develops the theoretical foundation, implementation workflow, and simulation-based evaluation of tensor Q and tensor T² monitoring, together with comparative benchmarks against vectorized PCA baselines. The resulting framework is designed for high-dimensional, structured process data where interpretability, structure-aware detection, and extensibility are central.

Overview

What this work covers

Theoretical foundation

Motivation, assumptions, multilinear representation, tensor Q and T² monitoring logic, and the statistical interpretation of structured versus residual variation.

Implementation workflow

Practical development through tensor foundations, Tucker/HOSVD decomposition, score-space monitoring, and sequential SPC extensions.

Comparative evaluation

Simulation studies comparing tensor monitoring to vectorized PCA through detection behavior, Monte Carlo benchmarking, ARL analysis, and curated results.

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Citation

Publication Details

Title: Tensor-Structured Statistical Process Control
Author: Jeff M.
Year: 2026
DOI: https://doi.org/10.5281/zenodo.19701711

Recommended citation:
Jeff M. (2026). Tensor-Structured Statistical Process Control. Zenodo. https://doi.org/10.5281/zenodo.19701711