1,171 research outputs found
Multi-Objective Optimization of Input Machining Parameters to Machined AISI D2 Tool Steel Material
Poor surface finish on die and mould transfers the bad quality to processed parts. High surface roughness is an example of bad surface finish that is normally reduced by manual polishing after conventional milling machining process. Therefore, in order to avoid disadvantages by manual polishing and disadvantage by the machining, a sequence of two machining operations is proposed. The main operation is run by the machining and followed by Rotary Ultrasonic Machining Assisted Milling (RUMAM). However, this sequence operation requires optimum input parameters to generate the lowest surface roughness. Hence, this paper aims to optimize the input parameters for both machining operations by three soft-computing approaches – Genetic Algorithm, Tabu Search, and Particle Swarm Optimization. The method adopted in this paper begins with a fitness function development, optimization approach usage and ends up with result evaluation and validation. The soft-computing approaches result outperforms the experiment result in having minimum surface roughness. Based on the findings, the conclusion suggests that the lower surface roughness can be obtained by applying the input parameters at maximum for the cutting speed and vibration frequency, and at minimum for machining feed rate. This finding assists manufacturers to apply proper input values to obtain parts with minimum surface roughness
Accelerating Manufacturing Decisions using Bayesian Optimization: An Optimization and Prediction Perspective
Manufacturing is a promising technique for producing complex and custom-made parts with a high degree of precision. It can also provide us with desired materials and products with specified properties. To achieve that, it is crucial to find out the optimum point of process parameters that have a significant impact on the properties and quality of the final product. Unfortunately, optimizing these parameters can be challenging due to the complex and nonlinear nature of the underlying process, which becomes more complicated when there are conflicting objectives, sometimes with multiple goals. Furthermore, experiments are usually costly, time-consuming, and require expensive materials, man, and machine hours. So, each experiment is valuable and it\u27s critical to determine the optimal experiment location to gain the most comprehensive understanding of the process. Sequential learning is a promising approach to actively learn from the ongoing experiments, iteratively update the underlying optimization routine, and adapt the data collection process on the go. This thesis presents a multi-objective Bayesian optimization framework to find out the optimum processing conditions for a manufacturing setup. It uses an acquisition function to collect data points sequentially and iteratively update its understanding of the underlying design space utilizing a Gaussian Process-based surrogate model.
In manufacturing processes, the focus is often on obtaining a rough understanding of the design space using minimal experimentation, rather than finding the optimal parameters. This falls under the category of approximating the underlying function rather than design optimization. This approach can provide material scientists or manufacturing engineers with a comprehensive view of the entire design space, increasing the likelihood of making discoveries or making robust decisions. However, a precise and reliable prediction model is necessary for a good approximation. To meet this requirement, this thesis proposes an epsilon-greedy sequential prediction framework that is distinct from the optimization framework. The data acquisition strategy has been refined to balance exploration and exploitation, and a threshold has been established to determine when to switch between the two. The performance of this proposed optimization and prediction framework is evaluated using real-life datasets against the traditional design of experiments. The proposed frameworks have generated effective optimization and prediction results using fewer experiments
Artificial cognitive architecture with self-learning and self-optimization capabilities. Case studies in micromachining processes
Tesis doctoral inédita leÃda en la Universidad Autónoma de Madrid, Escuela Politécnica Superior, Departamento de IngenierÃa Informática. Fecha de lectura : 22-09-201
Multi-objective Optimisation in Additive Manufacturing
Additive Manufacturing (AM) has demonstrated great potential to advance product
design and manufacturing, and has showed higher flexibility than conventional
manufacturing techniques for the production of small volume, complex and customised
components. In an economy focused on the need to develop customised and hi-tech
products, there is increasing interest in establishing AM technologies as a more efficient
production approach for high value products such as aerospace and biomedical
products.
Nevertheless, the use of AM processes, for even small to medium volume production
faces a number of issues in the current state of the technology. AM production is
normally used for making parts with complex geometry which implicates the
assessment of numerous processing options or choices; the wrong choice of process
parameters can result in poor surface quality, onerous manufacturing time and energy
waste, and thus increased production costs and resources. A few commonly used AM
processes require the presence of cellular support structures for the production of
overhanging parts. Depending on the object complexity their removal can be impossible
or very time (and resources) consuming.
Currently, there is a lack of tools to advise the AM operator on the optimal choice of
process parameters. This prevents the diffusion of AM as an efficient production
process for enterprises, and as affordable access to democratic product development for
individual users.
Research in literature has focused mainly on the optimisation of single criteria for AM
production. An integrated predictive modelling and optimisation technique has not yet
been well established for identifying an efficient process set up for complicated products which often involve critical building requirements. For instance, there are no
robust methods for the optimal design of complex cellular support structures, and most
of the software commercially available today does not provide adequate guidance on
how to optimally orientate the part into the machine bed, or which particular
combination of cellular structures need to be used as support. The choice of wrong
support and orientation can degenerate into structure collapse during an AM process
such as Selective Laser Melting (SLM), due to the high thermal stress in the junctions
between fillets of different cells.
Another issue of AM production is the limited parts’ surface quality typically generated
by the discrete deposition and fusion of material. This research has focused on the
formation of surface morphology of AM parts. Analysis of SLM parts showed that
roughness measured was different from that predicted through a classic model based on
pure geometrical consideration on the stair step profile. Experiments also revealed the
presence of partially bonded particles on the surface; an explanation of this phenomenon
has been proposed. Results have been integrated into a novel mathematical model for
the prediction of surface roughness of SLM parts. The model formulated correctly
describes the observed trend of the experimental data, and thus provides an accurate
prediction of surface roughness.
This thesis aims to deliver an effective computational methodology for the multi-
objective optimisation of the main building conditions that affect process efficiency of
AM production. For this purpose, mathematical models have been formulated for the
determination of parts’ surface quality, manufacturing time and energy consumption,
and for the design of optimal cellular support structures.
All the predictive models have been used to evaluate multiple performance and costs
objectives; all the objectives are typically contrasting; and all greatly affected by the
part’s build orientation. A multi-objective optimisation technique has been developed to visualise and identify
optimal trade-offs between all the contrastive objectives for the most efficient AM
production. Hence, this thesis has delivered a decision support system to assist the
operator in the "process planning" stage, in order to achieve optimal efficiency and
sustainability in AM production through maximum material, time and energy savings.EADS Airbus, Great Western Researc
Multi-objective optimization through artificial intelligence for designing of an Agave angustifolia leaf shredder
A neural network and a genetic algorithm were used in a hybrid method to get the optimal design parameters of an Agave angustifolia Haw. green leaf shredder. First, a prototype of an experimental machine was built using the design parameters recommended by the literature and calculated using linear equations. Then, the shredder prototype was subjected to experiments. The defibration data with different blade adjustments were obtained with experimental values. The data was configured and trained with an artificial neural network to establish a correlation between the defibration quality and the design parameters. The multi-objective optimization method based on genetic algorithms determined the optimal design parameters of the shredder’s functional mechanical elements. The best point was obtained from the least number of broken fibers (2.83%) and the most waste (73.15%). The method used proved suitable to optimize the design parameters; this was based on actual data obtained by experiments performed with the prototype and then modeled through artificial intelligence methods such as neural networks to determine an optimal solution using evolutionary genetic algorithm methods
Multiobjective Optimization of Laser Polishing of Additively Manufactured Ti-6Al-4V Parts for Minimum Surface Roughness and Heat-Affected Zone
Metal parts produced by additive manufacturing often require postprocessing to meet the specifications of the final product, which can make the process chain long and complex. Laser post-processes can be a valuable addition to conventional finishing methods. Laser polishing, specifically, is proving to be a great asset in improving the surface quality of parts in a relatively short time. For process development, experimental analysis can be extensive and expensive regarding the time requirement and laboratory facilities, while computational simulations demand the development of numerical models that, once validated, provide valuable tools for parameter optimization. In this work, experiments and simulations are performed based on the design of experiments to assess the effects of the parametric inputs on the resulting surface roughness and heat-affected zone depths. The data obtained are used to create both linear regression and artificial neural network models for each variable. The models with the best performance are then used in a multiobjective genetic algorithm optimization to establish combinations of parameters. The proposed approach successfully identifies an acceptable range of values for the given input parameters (laser power, focal offset, axial feed rate, number of repetitions, and scanning speed) to produce satisfactory values of Ra and HAZ simultaneously
Towards an Adaptive Design of Quality, Productivity and Economic Aspects When Machining AISI 4340 Steel With Wiper Inserts
The continuous pursue of sustainable manufacturing is motivating the utilization of new advanced technology, especially for hard to cut materials. In this study, an adaptive approach for optimization of machining process of AISI 4340 using wiper inserts is proposed. This approach is based on advance yet intuitive modeling and optimization techniques. The approach is based on Artificial Neural Network (ANN), Multi-Objective Genetic Algorithm (MOGA), as well as Linear Programming Techniques for Multidimensional Analysis of Preference (LINMAP), for modeling, optimization and multi-criteria decision making respectively. This integrated approach, to best of the authors’ knowledge, has been deployed for the first time to adaptively serve different designs of manufacturing processes. Such designs have different orientations, namely cost, quality, productivity, and balanced orientation. The capability of the proposed approach to serving such diverse requirements answers one of the most accelerating demands in the manufacturing community due to the dynamics of the uprising smart production lines. Besides, the proposed approach is presented in a straightforward manner that can be extended easily to other design orientations as well as other engineering applications. Based on the proposed design, a balanced general setting of 197.4 m/min, 0.95 mm, and 0.168 mm/rev was recommended along with other settings for more sophisticated requirements. Confirmatory experiments showed a good agreement (i.e., no more than 7% deviation) with the predicted optimum responses. This shows the validity of the proposed approach as a viable tool for designers to promote holistic and sustainable process design
Response surface methodology and artificial neural network-based models for predicting performance of wire electrical discharge machining of inconel 718 alloy
This paper deals with the development and comparison of prediction models established using response surface methodology (RSM) and artificial neural network (ANN) for a wire electrical discharge machining (WEDM) process. The WEDM experiments were designed using central composite design (CCD) for machining of Inconel 718 superalloy. During experimentation, the pulse-on-time (TON), pulse-off-time (TOFF), servo-voltage (SV), peak current (IP), and wire tension (WT) were chosen as control factors, whereas, the kerf width (Kf), surface roughness (Ra), and materials removal rate (MRR) were selected as performance attributes. The analysis of variance tests was performed to identify the control factors that significantly affect the performance attributes. The double hidden layer ANN model was developed using a back-propagation ANN algorithm, trained by the experimental results. The prediction accuracy of the established ANN model was found to be superior to the RSM model. Finally, the Non-Dominated Sorting Genetic Algorithm-II (NSGA- II) was implemented to determine the optimum WEDM conditions from multiple objectives
- …