Enhancing Mass Customization Manufacturing: Multiobjective Metaheuristic Algorithms for flow shop Production in Smart Industry
- URL: http://arxiv.org/abs/2407.15802v2
- Date: Fri, 26 Jul 2024 12:41:44 GMT
- Title: Enhancing Mass Customization Manufacturing: Multiobjective Metaheuristic Algorithms for flow shop Production in Smart Industry
- Authors: Diego Rossit, Daniel Rossit, Sergio Nesmachnow,
- Abstract summary: This study focuses on the necessary adaptations in shop-floor production planning.
It proposes the use of efficient evolutionary algorithms to tackle the flowshop with missing operations.
- Score: 0.0
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: The current landscape of massive production industries is undergoing significant transformations driven by emerging customer trends and new smart manufacturing technologies. One such change is the imperative to implement mass customization, wherein products are tailored to individual customer specifications while still ensuring cost efficiency through large-scale production processes. These shifts can profoundly impact various facets of the industry. This study focuses on the necessary adaptations in shop-floor production planning. Specifically, it proposes the use of efficient evolutionary algorithms to tackle the flowshop with missing operations, considering different optimization objectives: makespan, weighted total tardiness, and total completion time. An extensive computational experimentation is conducted across a range of realistic instances, encompassing varying numbers of jobs, operations, and probabilities of missing operations. The findings demonstrate the competitiveness of the proposed approach and enable the identification of the most suitable evolutionary algorithms for addressing this problem. Additionally, the impact of the probability of missing operations on optimization objectives is discussed.
Related papers
- Data-Driven Differential Evolution in Tire Industry Extrusion: Leveraging Surrogate Models [0.0]
This study proposes a surrogate-based, data-driven methodology for optimizing complex real-world manufacturing systems.<n>Machine learning models are employed to approximate system behavior and construct surrogate models, which are integrated into a tailored metaheuristic approach.<n>Results show that the surrogate-based optimization approach outperforms historical best configurations.
arXiv Detail & Related papers (2025-07-15T10:52:45Z) - ORMind: A Cognitive-Inspired End-to-End Reasoning Framework for Operations Research [53.736407871322314]
We introduce ORMind, a cognitive-inspired framework that enhances optimization through counterfactual reasoning.<n>Our approach emulates human cognition, implementing an end-to-end workflow that transforms requirements into mathematical models and executable code.<n>It is currently being tested internally in Lenovo's AI Assistant, with plans to enhance optimization capabilities for both business and consumer customers.
arXiv Detail & Related papers (2025-06-02T05:11:21Z) - Offline Model-Based Optimization: Comprehensive Review [61.91350077539443]
offline optimization is a fundamental challenge in science and engineering, where the goal is to optimize black-box functions using only offline datasets.
Recent advances in model-based optimization have harnessed the generalization capabilities of deep neural networks to develop offline-specific surrogate and generative models.
Despite its growing impact in accelerating scientific discovery, the field lacks a comprehensive review.
arXiv Detail & Related papers (2025-03-21T16:35:02Z) - A Survey on Inference Optimization Techniques for Mixture of Experts Models [50.40325411764262]
Large-scale Mixture of Experts (MoE) models offer enhanced model capacity and computational efficiency through conditional computation.
deploying and running inference on these models presents significant challenges in computational resources, latency, and energy efficiency.
This survey analyzes optimization techniques for MoE models across the entire system stack.
arXiv Detail & Related papers (2024-12-18T14:11:15Z) - Deep Insights into Automated Optimization with Large Language Models and Evolutionary Algorithms [3.833708891059351]
Large Language Models (LLMs) and Evolutionary Algorithms (EAs) offer promising new approach to overcome limitations and make optimization more automated.
LLMs act as dynamic agents that can generate, refine, and interpret optimization strategies.
EAs efficiently explore complex solution spaces through evolutionary operators.
arXiv Detail & Related papers (2024-10-28T09:04:49Z) - Sparse Attention-driven Quality Prediction for Production Process Optimization in Digital Twins [53.70191138561039]
We propose to deploy a digital twin of the production line by encoding its operational logic in a data-driven approach.
We adopt a quality prediction model for production process based on self-attention-enabled temporal convolutional neural networks.
Our operation experiments on a specific tobacco shredding line demonstrate that the proposed digital twin-based production process optimization method fosters seamless integration between virtual and real production lines.
arXiv Detail & Related papers (2024-05-20T09:28:23Z) - Multi-Fidelity Bayesian Optimization With Across-Task Transferable Max-Value Entropy Search [36.14499894307206]
This paper introduces a novel information-theoretic acquisition function that balances the need to acquire information about the current task with the goal of collecting information transferable to future tasks.
Results show that the proposed acquisition strategy can significantly improve the optimization efficiency as soon as a sufficient number of tasks is processed.
arXiv Detail & Related papers (2024-03-14T17:00:01Z) - Design Optimizer for Planar Soft-Growing Robot Manipulators [1.1888144645004388]
This work presents a novel approach for design optimization of soft-growing robots.
I optimize the kinematic chain of a soft manipulator to reach targets and avoid unnecessary overuse of material and resources.
I tested the proposed method on different tasks to access its optimality, which showed significant performance in solving the problem.
arXiv Detail & Related papers (2023-10-05T08:23:17Z) - Evolutionary Solution Adaption for Multi-Objective Metal Cutting Process
Optimization [59.45414406974091]
We introduce a framework for system flexibility that allows us to study the ability of an algorithm to transfer solutions from previous optimization tasks.
We study the flexibility of NSGA-II, which we extend by two variants: 1) varying goals, that optimize solutions for two tasks simultaneously to obtain in-between source solutions expected to be more adaptable, and 2) active-inactive genotype, that accommodates different possibilities that can be activated or deactivated.
Results show that adaption with standard NSGA-II greatly reduces the number of evaluations required for optimization to a target goal, while the proposed variants further improve the adaption costs.
arXiv Detail & Related papers (2023-05-31T12:07:50Z) - Backpropagation of Unrolled Solvers with Folded Optimization [55.04219793298687]
The integration of constrained optimization models as components in deep networks has led to promising advances on many specialized learning tasks.
One typical strategy is algorithm unrolling, which relies on automatic differentiation through the operations of an iterative solver.
This paper provides theoretical insights into the backward pass of unrolled optimization, leading to a system for generating efficiently solvable analytical models of backpropagation.
arXiv Detail & Related papers (2023-01-28T01:50:42Z) - Adaptive Inference through Early-Exit Networks: Design, Challenges and
Directions [80.78077900288868]
We decompose the design methodology of early-exit networks to its key components and survey the recent advances in each one of them.
We position early-exiting against other efficient inference solutions and provide our insights on the current challenges and most promising future directions for research in the field.
arXiv Detail & Related papers (2021-06-09T12:33:02Z) - Multi-Objective Optimization of the Textile Manufacturing Process Using
Deep-Q-Network Based Multi-Agent Reinforcement Learning [5.900286890213338]
The paper proposes a multi-agent reinforcement learning (MARL) framework to transform the optimization process into a game.
A utilitarian selection mechanism was employed in the game to avoid the interruption of multiple equilibriumlibria.
The proposed MARL system is possible to achieve the optimal solutions for the textile ozonation process and it performs better than the traditional approaches.
arXiv Detail & Related papers (2020-12-02T11:37:44Z) - AI-based Modeling and Data-driven Evaluation for Smart Manufacturing
Processes [56.65379135797867]
We propose a dynamic algorithm for gaining useful insights about semiconductor manufacturing processes.
We elaborate on the utilization of a Genetic Algorithm and Neural Network to propose an intelligent feature selection algorithm.
arXiv Detail & Related papers (2020-08-29T14:57:53Z) - Automatically Learning Compact Quality-aware Surrogates for Optimization
Problems [55.94450542785096]
Solving optimization problems with unknown parameters requires learning a predictive model to predict the values of the unknown parameters and then solving the problem using these values.
Recent work has shown that including the optimization problem as a layer in a complex training model pipeline results in predictions of iteration of unobserved decision making.
We show that we can improve solution quality by learning a low-dimensional surrogate model of a large optimization problem.
arXiv Detail & Related papers (2020-06-18T19:11:54Z)
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.