Efficiency-Aware Computational Intelligence for Resource-Constrained Manufacturing Toward Edge-Ready Deployment
- URL: http://arxiv.org/abs/2512.09319v1
- Date: Wed, 10 Dec 2025 05:08:55 GMT
- Title: Efficiency-Aware Computational Intelligence for Resource-Constrained Manufacturing Toward Edge-Ready Deployment
- Authors: Qianyu Zhou,
- Abstract summary: Industrial cyber physical systems operate under heterogeneous sensing, dynamics, and shifting process conditions.<n>High-fidelity datasets remain costly, confidential, and slow to obtain, while edge devices face strict limits on latency, bandwidth, and energy.<n>Motivated by these challenges, this dissertation develops an efficiency grounded computational framework that enables data lean, physics-aware, and deployment ready intelligence.
- Score: 8.383160350994816
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Industrial cyber physical systems operate under heterogeneous sensing, stochastic dynamics, and shifting process conditions, producing data that are often incomplete, unlabeled, imbalanced, and domain shifted. High-fidelity datasets remain costly, confidential, and slow to obtain, while edge devices face strict limits on latency, bandwidth, and energy. These factors restrict the practicality of centralized deep learning, hinder the development of reliable digital twins, and increase the risk of error escape in safety-critical applications. Motivated by these challenges, this dissertation develops an efficiency grounded computational framework that enables data lean, physics-aware, and deployment ready intelligence for modern manufacturing environments. The research advances methods that collectively address core bottlenecks across multimodal and multiscale industrial scenarios. Generative strategies mitigate data scarcity and imbalance, while semi-supervised learning integrates unlabeled information to reduce annotation and simulation demands. Physics-informed representation learning strengthens interpretability and improves condition monitoring under small-data regimes. Spatially aware graph-based surrogate modeling provides efficient approximation of complex processes, and an edge cloud collaborative compression scheme supports real-time signal analytics under resource constraints. The dissertation also extends visual understanding through zero-shot vision language reasoning augmented by domain specific retrieval, enabling generalizable assessment in previously unseen scenarios. Together, these developments establish a unified paradigm of data efficient and resource aware intelligence that bridges laboratory learning with industrial deployment, supporting reliable decision-making across diverse manufacturing systems.
Related papers
- Advances and Frontiers of LLM-based Issue Resolution in Software Engineering: A Comprehensive Survey [59.3507264893654]
Issue resolution is a complex Software Engineering task integral to real-world development.<n> benchmarks like SWE-bench revealed this task as profoundly difficult for large language models.<n>This paper presents a systematic survey of this emerging domain.
arXiv Detail & Related papers (2026-01-15T18:55:03Z) - Interpretable Hybrid Deep Q-Learning Framework for IoT-Based Food Spoilage Prediction with Synthetic Data Generation and Hardware Validation [0.5417521241272645]
The need for an intelligent, real-time spoilage prediction system has become critical in modern IoT-driven food supply chains.<n>We propose a hybrid reinforcement learning framework integrating Long Short-Term Memory (LSTM) and Recurrent Neural Networks (RNN) for enhanced spoilage prediction.
arXiv Detail & Related papers (2025-12-22T12:59:48Z) - From Physics to Machine Learning and Back: Part II - Learning and Observational Bias in PHM [52.64097278841485]
Review examines how incorporating learning and observational biases through physics-informed modeling and data strategies can guide models toward physically consistent and reliable predictions.<n>Fast adaptation methods including meta-learning and few-shot learning are reviewed alongside domain generalization techniques.
arXiv Detail & Related papers (2025-09-25T14:15:43Z) - Lightweight Task-Oriented Semantic Communication Empowered by Large-Scale AI Models [66.57755931421285]
Large-scale artificial intelligence (LAI) models pose significant challenges for real-time communication scenarios.<n>This paper proposes utilizing knowledge distillation (KD) techniques to extract and condense knowledge from LAI models.<n>We propose a fast distillation method featuring a pre-stored compression mechanism that eliminates the need for repetitive inference.
arXiv Detail & Related papers (2025-06-16T08:42:16Z) - Edge-Cloud Collaborative Computing on Distributed Intelligence and Model Optimization: A Survey [58.50944604905037]
Edge-cloud collaborative computing (ECCC) has emerged as a pivotal paradigm for addressing the computational demands of modern intelligent applications.<n>Recent advancements in AI, particularly deep learning and large language models (LLMs), have dramatically enhanced the capabilities of these distributed systems.<n>This survey provides a structured tutorial on fundamental architectures, enabling technologies, and emerging applications.
arXiv Detail & Related papers (2025-05-03T13:55:38Z) - SCENT: Robust Spatiotemporal Learning for Continuous Scientific Data via Scalable Conditioned Neural Fields [11.872753517172555]
We present SCENT, a novel framework for scalable and continuity-informed modeling learning.<n>SCENT unifies representation, reconstruction, and forecasting within a single architecture.<n>We validate SCENT through extensive simulations and real-world experiments, demonstrating state-of-the-art performance.
arXiv Detail & Related papers (2025-04-16T17:17:31Z) - Decentralized Learning Strategies for Estimation Error Minimization with Graph Neural Networks [86.99017195607077]
We address the challenge of sampling and remote estimation for autoregressive Markovian processes in a wireless network with statistically-identical agents.<n>Our goal is to minimize time-average estimation error and/or age of information with decentralized scalable sampling and transmission policies.
arXiv Detail & Related papers (2024-04-04T06:24:11Z) - MISS: Memory-efficient Instance Segmentation Framework By Visual Inductive Priors Flow Propagation [8.727456619750983]
The strategic integration of a visual prior into the training dataset emerges as a potential solution to enhance congruity with the testing data distribution.
Our empirical evaluations underscore the efficacy of MISS, demonstrating commendable performance in scenarios characterized by limited data availability and memory constraints.
arXiv Detail & Related papers (2024-03-18T08:52:23Z) - Collectionless Artificial Intelligence [24.17437378498419]
This paper sustains the position that the time has come for thinking of new learning protocols.
Machines conquer cognitive skills in a truly human-like context centered on environmental interactions.
arXiv Detail & Related papers (2023-09-13T13:20:17Z) - AttNS: Attention-Inspired Numerical Solving For Limited Data Scenarios [51.94807626839365]
We propose the attention-inspired numerical solver (AttNS) to solve differential equations due to limited data.<n>AttNS is inspired by the effectiveness of attention modules in Residual Neural Networks (ResNet) in enhancing model generalization and robustness.
arXiv Detail & Related papers (2023-02-05T01:39:21Z) - Distributed intelligence on the Edge-to-Cloud Continuum: A systematic
literature review [62.997667081978825]
This review aims at providing a comprehensive vision of the main state-of-the-art libraries and frameworks for machine learning and data analytics available today.
The main simulation, emulation, deployment systems, and testbeds for experimental research on the Edge-to-Cloud Continuum available today are also surveyed.
arXiv Detail & Related papers (2022-04-29T08:06:05Z) - Robust, Deep, and Reinforcement Learning for Management of Communication
and Power Networks [6.09170287691728]
The present thesis first develops principled methods to make generic machine learning models robust against distributional uncertainties and adversarial data.
We then build on this robust framework to design robust semi-supervised learning over graph methods.
The second part of this thesis aspires to fully unleash the potential of next-generation wired and wireless networks.
arXiv Detail & Related papers (2022-02-08T05:49:06Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.