Material synthesis through simulations guided by machine learning: a position paper
- URL: http://arxiv.org/abs/2411.13953v2
- Date: Tue, 26 Nov 2024 11:53:44 GMT
- Title: Material synthesis through simulations guided by machine learning: a position paper
- Authors: Usman Syed, Federico Cunico, Uzair Khan, Eros Radicchi, Francesco Setti, Adolfo Speghini, Paolo Marone, Filiberto Semenzin, Marco Cristani,
- Abstract summary: Marble sludge, a calcium-rich residual from stone-cutting processes, can be repurposed by mixing it with various ingredients.
We propose an approach for sustainable data collection in the field of optimal mix design for marble sludge reuse.
- Score: 8.200404240116516
- License:
- Abstract: In this position paper, we propose an approach for sustainable data collection in the field of optimal mix design for marble sludge reuse. Marble sludge, a calcium-rich residual from stone-cutting processes, can be repurposed by mixing it with various ingredients. However, determining the optimal mix design is challenging due to the variability in sludge composition and the costly, time-consuming nature of experimental data collection. Also, we investigate the possibility of using machine learning models using meta-learning as an optimization tool to estimate the correct quantity of stone-cutting sludge to be used in aggregates to obtain a mix design with specific mechanical properties that can be used successfully in the building industry. Our approach offers two key advantages: (i) through simulations, a large dataset can be generated, saving time and money during the data collection phase, and (ii) Utilizing machine learning models, with performance enhancement through hyper-parameter optimization via meta-learning, to estimate optimal mix designs reducing the need for extensive manual experimentation, lowering costs, minimizing environmental impact, and accelerating the processing of quarry sludge. Our idea promises to streamline the marble sludge reuse process by leveraging collective data and advanced machine learning, promoting sustainability and efficiency in the stonecutting sector.
Related papers
- Optimizing Pretraining Data Mixtures with LLM-Estimated Utility [52.08428597962423]
Large Language Models improve with increasing amounts of high-quality training data.
We find token-counts outperform manual and learned mixes, indicating that simple approaches for dataset size and diversity are surprisingly effective.
We propose two complementary approaches: UtiliMax, which extends token-based $200s by incorporating utility estimates from reduced-scale ablations, achieving up to a 10.6x speedup over manual baselines; and Model Estimated Data Utility (MEDU), which leverages LLMs to estimate data utility from small samples, matching ablation-based performance while reducing computational requirements by $simx.
arXiv Detail & Related papers (2025-01-20T21:10:22Z) - PearSAN: A Machine Learning Method for Inverse Design using Pearson Correlated Surrogate Annealing [66.27103948750306]
PearSAN is a machine learning-assisted optimization algorithm applicable to inverse design problems with large design spaces.
It uses a Pearson correlated surrogate model to predict the figure of merit of the true design metric.
It achieves a state-of-the-art maximum design efficiency of 97%, and is at least an order of magnitude faster than previous methods.
arXiv Detail & Related papers (2024-12-26T17:02:19Z) - Unveiling Processing--Property Relationships in Laser Powder Bed Fusion: The Synergy of Machine Learning and High-throughput Experiments [0.0]
We propose a methodology embracing the synergy between high- throughput experimentation and hierarchical machine learning (ML)
We unveil the complex relationships between a large set of process parameters in Laser Powder Bed Fusion (LPBF) and selected mechanical properties (tensile strength and ductility)
Our approach is material-agnostic and herein we demonstrate its application on 17-4PH stainless steel.
arXiv Detail & Related papers (2024-08-30T20:34:16Z) - Machine Learning Optimized Approach for Parameter Selection in MESHFREE Simulations [0.0]
Meshfree simulation methods are emerging as compelling alternatives to conventional mesh-based approaches.
We provide a comprehensive overview of our research combining Machine Learning (ML) and Fraunhofer's MESHFREE software.
We introduce a novel ML-optimized approach, using active learning, regression trees, and visualization on MESHFREE simulation data.
arXiv Detail & Related papers (2024-03-20T15:29:59Z) - Learning Energy-Based Models by Cooperative Diffusion Recovery Likelihood [64.95663299945171]
Training energy-based models (EBMs) on high-dimensional data can be both challenging and time-consuming.
There exists a noticeable gap in sample quality between EBMs and other generative frameworks like GANs and diffusion models.
We propose cooperative diffusion recovery likelihood (CDRL), an effective approach to tractably learn and sample from a series of EBMs.
arXiv Detail & Related papers (2023-09-10T22:05:24Z) - A Comparative Study of Machine Learning Algorithms for Anomaly Detection
in Industrial Environments: Performance and Environmental Impact [62.997667081978825]
This study seeks to address the demands of high-performance machine learning models with environmental sustainability.
Traditional machine learning algorithms, such as Decision Trees and Random Forests, demonstrate robust efficiency and performance.
However, superior outcomes were obtained with optimised configurations, albeit with a commensurate increase in resource consumption.
arXiv Detail & Related papers (2023-07-01T15:18:00Z) - Probabilistic selection and design of concrete using machine learning [0.0]
Making reliable property predictions with machine learning can facilitate performance-based specification of concrete.
We apply the methodology to specify a concrete mix that has high resistance to carbonation, and another concrete mix that has low environmental impact.
Our generic methodology enables the exploitation of noise in machine learning, which has a broad range of applications in structural engineering.
arXiv Detail & Related papers (2023-04-21T19:20:40Z) - A Data Driven Sequential Learning Framework to Accelerate and Optimize
Multi-Objective Manufacturing Decisions [1.5771347525430772]
This paper presents a novel data-driven Bayesian optimization framework that utilizes sequential learning to efficiently optimize complex systems.
The proposed framework is particularly beneficial in practical applications where acquiring data can be expensive and resource intensive.
It implies that the proposed data-driven framework can lead to similar manufacturing decisions with reduced costs and time.
arXiv Detail & Related papers (2023-04-18T20:33:08Z) - Multi-objective simulation optimization of the adhesive bonding process
of materials [50.591267188664666]
Finding the optimal process parameters for such adhesive bonding process is challenging.
In this research, we successfully applied Bayesian optimization using Gaussian Process Regression and Logistic Regression.
arXiv Detail & Related papers (2021-12-09T09:58:58Z) - TRAIL: Near-Optimal Imitation Learning with Suboptimal Data [100.83688818427915]
We present training objectives that use offline datasets to learn a factored transition model.
Our theoretical analysis shows that the learned latent action space can boost the sample-efficiency of downstream imitation learning.
To learn the latent action space in practice, we propose TRAIL (Transition-Reparametrized Actions for Imitation Learning), an algorithm that learns an energy-based transition model.
arXiv Detail & Related papers (2021-10-27T21:05:00Z) - Performance Analysis of Combine Harvester using Hybrid Model of
Artificial Neural Networks Particle Swarm Optimization [0.0]
This paper proposes a novel hybrid machine learning model based on artificial neural networks integrated with particle swarm optimization (ANN-PSO)
The results show promising results to improve the performance of the combine harvesters.
arXiv Detail & Related papers (2020-02-22T22:38:01Z)
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.