Genetic Algorithms

遗传算法
  • 文章类型: Journal Article
    这项研究探索了一种通过分析脑电图(EEG)信号来检测唤醒水平的新颖方法。利用来自18名健康参与者的数据的Faller数据库,我们采用64通道脑电图系统。
    我们采用的方法需要从每个通道中提取十个频率特性,为每个信号实例计算640维的特征向量。为了提高分类准确性,我们采用遗传算法进行特征选择,将其视为多目标优化任务。该方法利用快速比特跳变来提高效率,克服传统的位串限制。混合算子加快算法收敛,和解决方案选择策略识别最合适的特征子集。
    实验结果证明了该方法在检测不同状态的唤醒水平方面的有效性,随着准确性的提高,灵敏度,和特异性。在方案一,所提出的方法达到了平均精度,灵敏度,和93.11%的特异性,98.37%,99.14%,分别。在场景2中,平均值为81.35%,88.65%,和84.64%。
    获得的结果表明,所提出的方法在不同场景中具有很高的检测唤醒水平的能力。此外,已经证明了采用所提出的特征减少方法的优点。
    UNASSIGNED: This study explores a novel approach to detecting arousal levels through the analysis of electroencephalography (EEG) signals. Leveraging the Faller database with data from 18 healthy participants, we employ a 64-channel EEG system.
    UNASSIGNED: The approach we employ entails the extraction of ten frequency characteristics from every channel, culminating in a feature vector of 640 dimensions for each signal instance. To enhance classification accuracy, we employ a genetic algorithm for feature selection, treating it as a multiobjective optimization task. The approach utilizes fast bit hopping for efficiency, overcoming traditional bit-string limitations. A hybrid operator expedites algorithm convergence, and a solution selection strategy identifies the most suitable feature subset.
    UNASSIGNED: Experimental results demonstrate the method\'s effectiveness in detecting arousal levels across diverse states, with improvements in accuracy, sensitivity, and specificity. In scenario one, the proposed method achieves an average accuracy, sensitivity, and specificity of 93.11%, 98.37%, and 99.14%, respectively. In scenario two, the averages stand at 81.35%, 88.65%, and 84.64%.
    UNASSIGNED: The obtained results indicate that the proposed method has a high capability of detecting arousal levels in different scenarios. In addition, the advantage of employing the proposed feature reduction method has been demonstrated.
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  • 文章类型: Journal Article
    在现代制造业中,优化算法已成为提高加工技术效率和质量的关键工具。随着计算技术的进步和人工智能的发展,这些算法在加工过程的参数优化中起着越来越重要的作用。目前,响应面法的发展,遗传算法,Taguchi方法,粒子群优化算法相对成熟,在工艺参数优化中的应用相当广泛。它们越来越多地用作表面粗糙度的优化目标,地下损伤,切削力,和机械性能,加工和特殊加工。本文对优化算法在实际工程生产领域的应用和发展趋势进行了系统的回顾。它深入研究了分类,定义,以及工程制造过程中工艺参数优化算法的研究现状,国内和国际。此外,它提供了这些优化算法在实际场景中的具体应用的详细探索。优化算法的演变旨在增强未来制造业的竞争力,促进制造技术向更高的效率发展,可持续性和定制。
    In modern manufacturing, optimization algorithms have become a key tool for improving the efficiency and quality of machining technology. As computing technology advances and artificial intelligence evolves, these algorithms are assuming an increasingly vital role in the parameter optimization of machining processes. Currently, the development of the response surface method, genetic algorithm, Taguchi method, and particle swarm optimization algorithm is relatively mature, and their applications in process parameter optimization are quite extensive. They are increasingly used as optimization objectives for surface roughness, subsurface damage, cutting forces, and mechanical properties, both for machining and special machining. This article provides a systematic review of the application and developmental trends of optimization algorithms within the realm of practical engineering production. It delves into the classification, definition, and current state of research concerning process parameter optimization algorithms in engineering manufacturing processes, both domestically and internationally. Furthermore, it offers a detailed exploration of the specific applications of these optimization algorithms in real-world scenarios. The evolution of optimization algorithms is geared towards bolstering the competitiveness of the future manufacturing industry and fostering the advancement of manufacturing technology towards greater efficiency, sustainability, and customization.
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  • 文章类型: Journal Article
    本文探讨了复杂网络模型和遗传算法在流行病学建模中的应用。通过考虑小世界和巴拉巴西-阿尔伯特网络模型,我们的目标是复制城市环境中疾病传播的动态。这项研究强调了准确绘制个人联系人和社交网络以预测疾病进展的重要性。使用遗传算法,我们估计网络建设的输入参数,从而模拟这些网络中的疾病传播。我们的结果表明网络与真实的社交互动相似,突出了它们在预测疾病传播方面的潜力。这项研究强调了复杂网络模型和遗传算法在理解和管理公共卫生危机中的重要性。
    This paper explores the application of complex network models and genetic algorithms in epidemiological modeling. By considering the small-world and Barabási-Albert network models, we aim to replicate the dynamics of disease spread in urban environments. This study emphasizes the importance of accurately mapping individual contacts and social networks to forecast disease progression. Using a genetic algorithm, we estimate the input parameters for network construction, thereby simulating disease transmission within these networks. Our results demonstrate the networks\' resemblance to real social interactions, highlighting their potential in predicting disease spread. This study underscores the significance of complex network models and genetic algorithms in understanding and managing public health crises.
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  • 文章类型: Journal Article
    在本文中,我们的目标是通过集成基于生物生命周期的动态模型来增强遗传算法(GA)。这项研究通过纳入出生阶段来解决保持GA多样性和适应性的挑战,增长,繁殖,和死亡进入算法的框架。我们考虑生命周期阶段对人口中的个体的异步执行,确保稳态演进,在保持多样性的同时保留高质量的解决方案。实验结果表明,所提出的扩展优于传统的GA,并且在各种基准问题中与PSO和EvoSpace等其他知名和成熟的算法一样好或更好。特别是关于收敛速度和求解能力。该研究得出的结论是,将生物生命周期动力学纳入GA可以增强其稳健性和效率,为进化计算的未来研究提供了一个有希望的方向。
    In this paper, we aim to enhance genetic algorithms (GAs) by integrating a dynamic model based on biological life cycles. This study addresses the challenge of maintaining diversity and adaptability in GAs by incorporating stages of birth, growth, reproduction, and death into the algorithm\'s framework. We consider an asynchronous execution of life cycle stages to individuals in the population, ensuring a steady-state evolution that preserves high-quality solutions while maintaining diversity. Experimental results demonstrate that the proposed extension outperforms traditional GAs and is as good or better than other well-known and well established algorithms like PSO and EvoSpace in various benchmark problems, particularly regarding convergence speed and solution qu/ality. The study concludes that incorporating biological life-cycle dynamics into GAs enhances their robustness and efficiency, offering a promising direction for future research in evolutionary computation.
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  • 文章类型: Journal Article
    这项研究的目的是介绍一种通过将功能近红外光谱(fNIRS)研究分类为PD阳性或阴性来辅助诊断帕金森病(PD)的方法。fNIRS是一种非侵入性的光学信号模式,传达大脑的血液动力学反应,特别是大脑皮层中血氧合的变化;它作为辅助PD检测的工具的潜力值得探索,因为与其他神经影像学方法相比,它是非侵入性的且具有成本效益。除了fNIRS和机器学习的集成,这项工作的一个贡献是实现和测试了各种方法,以找到实现最高性能的实现。所有实现都使用逻辑回归模型进行分类。从每个参与者的fNIRS研究中提取了一组792个时间和光谱特征。在两个性能最好的实现中,使用特征排序技术的集合来选择减少的特征子集,随后用遗传算法将其缩小。实现最佳检测性能,我们的方法达到了100%的准确度,精度,和回忆,F1评分和曲线下面积(AUC)为1,使用14个特征。这大大促进了PD诊断,强调整合fNIRS和机器学习用于非侵入性PD检测的潜力。
    The purpose of this research is to introduce an approach to assist the diagnosis of Parkinson\'s disease (PD) by classifying functional near-infrared spectroscopy (fNIRS) studies as PD positive or negative. fNIRS is a non-invasive optical signal modality that conveys the brain\'s hemodynamic response, specifically changes in blood oxygenation in the cerebral cortex; and its potential as a tool to assist PD detection deserves to be explored since it is non-invasive and cost-effective as opposed to other neuroimaging modalities. Besides the integration of fNIRS and machine learning, a contribution of this work is that various approaches were implemented and tested to find the implementation that achieves the highest performance. All the implementations used a logistic regression model for classification. A set of 792 temporal and spectral features were extracted from each participant\'s fNIRS study. In the two best performing implementations, an ensemble of feature-ranking techniques was used to select a reduced feature subset, which was subsequently reduced with a genetic algorithm. Achieving optimal detection performance, our approach reached 100 % accuracy, precision, and recall, with an F1 score and area under the curve (AUC) of 1, using 14 features. This significantly advances PD diagnosis, highlighting the potential of integrating fNIRS and machine learning for non-invasive PD detection.
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  • 文章类型: Journal Article
    在这篇文章中,研究了与导波测量相关的实际问题:(1)PZT板执行器(NAC2013)胶合对产生的弹性波传播的影响,(2)PZT传感器附件的可重复性,和(3)评估比较对不同2D样品进行的激光多普勒振动测量(LDV)测量结果的可能性。在评估将导波现象应用于结构健康监测系统的可能性的背景下,考虑这些问题至关重要,例如,在土木工程中。在考试中,在钢I形截面试样的腹板上进行了实验室测试。标本的尺寸和形状的发展方式,使它们类似于土木工程结构中通常使用的元素。事实证明,当使用蜡粘合激发器时,所产生的波的振幅最高。这种连接类型的可重复性和耐久性是最弱的。由于这个原因,它不适合在实验室外实际使用。永久涂胶在激励器和试样之间提供了稳定的连接,但产生的信号振幅最低。在论文中,提出了一种致力于客观分析和比较在不同样品表面传播的弹性波的新方法。在这个过程中,遗传算法有助于确定新的坐标系,其中可以评估不同方向的波传播质量。
    In this article, the practical issues connected with guided wave measurement are studied: (1) the influence of gluing of PZT plate actuators (NAC2013) on generated elastic wave propagation, (2) the repeatability of PZT transducers attachment, and (3) the assessment of the possibility of comparing the results of Laser Doppler Vibrometry (LDV) measurement performed on different 2D samples. The consideration of these questions is crucial in the context of the assessment of the possibility of the application of the guided wave phenomenon to structural health-monitoring systems, e.g., in civil engineering. In the examination, laboratory tests on the web of steel I-section specimens were conducted. The size and shape of the specimens were developed in such a way that they were similar to the elements typically used in civil engineering structures. It was proved that the highest amplitude of the generated wave was obtained when the exciters were glued using wax. The repeatability and durability of this connection type were the weakest. Due to this reason, it was not suitable for practical use outside the laboratory. The permanent glue application gave a stable connection between the exciter and the specimen, but the generated signal had the lowest amplitude. In the paper, the new procedure dedicated to objective analysis and comparison of the elastic waves propagating on the surface of different specimens was proposed. In this procedure, the genetic algorithms help with the determination of a new coordinate system, in which the assessment of the quality of wave propagation in different directions is possible.
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  • 文章类型: Journal Article
    基于生理的动力学(PBK)模型广泛用于药理学和毒理学,用于预测暴露后物质的内部配置。自愿或不。由于其复杂性,需要估计大量的模型参数,要么通过硅片工具,体外实验或通过将模型拟合到体内数据。在后一种情况下,在体内数据上拟合复杂的结构模型可能导致过度参数化并产生不切实际的参数估计。为了解决这些问题,我们提出了一种新的参数分组方法,通过共同估计跨隔室的参数组来减少参数空间。参数分组使用遗传算法进行,并且是完全自动化的,基于一种新颖的拟合优度度量。为了说明拟议方法的实际应用,进行了两个案例研究。第一个案例研究展示了一种新的PBK模型的开发,而第二个侧重于模型细化。在第一个案例研究中,建立了PBK模型,以阐明静脉注射后大鼠中二氧化钛(TiO2)纳米颗粒的生物分布。采用了多种参数估计方案。基于拟合优度指标的比较分析表明,所提出的方法产生的模型优于标准估计方法,同时使用减少数量的参数。在第二个案例研究中,现有的大鼠全氟辛酸(PFOA)PBK模型扩展到纳入其他组织,为PFOA生物分布提供了更全面的描述。两种模型均通过独立的体内研究进行验证,以确保其可靠性。
    Physiologically based kinetic (PBK) models are widely used in pharmacology and toxicology for predicting the internal disposition of substances upon exposure, voluntarily or not. Due to their complexity, a large number of model parameters need to be estimated, either through in silico tools, in vitro experiments, or by fitting the model to in vivo data. In the latter case, fitting complex structural models on in vivo data can result in overparameterization and produce unrealistic parameter estimates. To address these issues, we propose a novel parameter grouping approach, which reduces the parametric space by co-estimating groups of parameters across compartments. Grouping of parameters is performed using genetic algorithms and is fully automated, based on a novel goodness-of-fit metric. To illustrate the practical application of the proposed methodology, two case studies were conducted. The first case study demonstrates the development of a new PBK model, while the second focuses on model refinement. In the first case study, a PBK model was developed to elucidate the biodistribution of titanium dioxide (TiO2) nanoparticles in rats following intravenous injection. A variety of parameter estimation schemes were employed. Comparative analysis based on goodness-of-fit metrics demonstrated that the proposed methodology yields models that outperform standard estimation approaches, while utilizing a reduced number of parameters. In the second case study, an existing PBK model for perfluorooctanoic acid (PFOA) in rats was extended to incorporate additional tissues, providing a more comprehensive portrayal of PFOA biodistribution. Both models were validated through independent in vivo studies to ensure their reliability.
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  • 文章类型: Journal Article
    天线的精确放置对于确保有效覆盖至关重要,服务质量,和无线通信中的网络容量,特别是考虑到移动连接的指数增长。天线定位问题(APP)已经从理论方法发展到采用先进算法的实际解决方案,比如进化算法。这项研究的重点是开发创新的网络工具,利用遗传算法优化天线定位,从传播损耗计算开始。为了实现这一点,回顾了七个经验模型,并将其集成到天线定位网工具中。结果表明,以最少的配置和仔细的型号选择,详细分析天线定位在任何区域都是可行的。该工具是使用Java17和TypeScript5.1.6开发的,利用JMetal框架应用遗传算法,并具有基于React的Web界面,可促进应用程序集成。为了将来的研究,考虑实现能够根据特定区域选择分析环境的服务器,从而提高天线定位分析的准确性和客观性。
    The precise placement of antennas is essential to ensure effective coverage, service quality, and network capacity in wireless communications, particularly given the exponential growth of mobile connectivity. The antenna positioning problem (APP) has evolved from theoretical approaches to practical solutions employing advanced algorithms, such as evolutionary algorithms. This study focuses on developing innovative web tools harnessing genetic algorithms to optimize antenna positioning, starting from propagation loss calculations. To achieve this, seven empirical models were reviewed and integrated into an antenna positioning web tool. Results demonstrate that, with minimal configuration and careful model selection, a detailed analysis of antenna positioning in any area is feasible. The tool was developed using Java 17 and TypeScript 5.1.6, utilizing the JMetal framework to apply genetic algorithms, and features a React-based web interface facilitating application integration. For future research, consideration is given to implementing a server capable of analyzing the environment based on specific area selection, thereby enhancing the precision and objectivity of antenna positioning analysis.
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  • 文章类型: Journal Article
    本研究探讨了基于元启发式的特征选择在提高诊断肌肉减少症的机器学习性能方面的功效。在将机器学习应用于肌肉减少症诊断时,显着影响诊断效能的特征的提取和利用成为关键方面。使用第八届韩国衰老纵向研究(KLoSA)的数据,这项研究检查了和声搜索(HS)和遗传算法(GA)的特征选择。对结果特征集的评估涉及决策树,随机森林,支持向量机,和幼稚的贝叶斯算法。因此,用支持向量机训练的HS衍生特征集的准确度为0.785,加权F1得分为0.782,优于传统方法.这些发现强调了基于元启发式的选择的竞争优势,证明其在推进肌少症诊断方面的潜力。本研究主张进一步探索基于元启发式的特征选择在未来的肌少症研究中的关键作用。
    This study explores the efficacy of metaheuristic-based feature selection in improving machine learning performance for diagnosing sarcopenia. Extraction and utilization of features significantly impacting diagnosis efficacy emerge as a critical facet when applying machine learning for sarcopenia diagnosis. Using data from the 8th Korean Longitudinal Study on Aging (KLoSA), this study examines harmony search (HS) and the genetic algorithm (GA) for feature selection. Evaluation of the resulting feature set involves a decision tree, a random forest, a support vector machine, and naïve bayes algorithms. As a result, the HS-derived feature set trained with a support vector machine yielded an accuracy of 0.785 and a weighted F1 score of 0.782, which outperformed traditional methods. These findings underscore the competitive edge of metaheuristic-based selection, demonstrating its potential in advancing sarcopenia diagnosis. This study advocates for further exploration of metaheuristic-based feature selection\'s pivotal role in future sarcopenia research.
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  • 文章类型: Journal Article
    本研究对遗传算法(GA)和XGBoost的组合进行了全面分析,一个著名的机器学习模型。主要重点在于智能电网应用中欺诈检测的超参数优化。实证结果表明,优化后模型的性能指标有了值得注意的提高,特别强调精度从0.82大幅提高到0.978。精度,召回,AUROC指标显示出明显的改善,表明优化XGBoost模型进行欺诈检测的有效性。我们的研究结果为扩展智能电网欺诈检测领域做出了重要贡献。这些结果强调了高级元启发式算法用于优化复杂机器学习模型的潜在用途。这项工作展示了在提高智能电网中欺诈检测系统的准确性和效率方面的重大进展。
    This study provides a comprehensive analysis of the combination of Genetic Algorithms (GA) and XGBoost, a well-known machine-learning model. The primary emphasis lies in hyperparameter optimization for fraud detection in smart grid applications. The empirical findings demonstrate a noteworthy enhancement in the model\'s performance metrics following optimization, particularly emphasizing a substantial increase in accuracy from 0.82 to 0.978. The precision, recall, and AUROC metrics demonstrate a clear improvement, indicating the effectiveness of optimizing the XGBoost model for fraud detection. The findings from our study significantly contribute to the expanding field of smart grid fraud detection. These results emphasize the potential uses of advanced metaheuristic algorithms to optimize complex machine-learning models. This work showcases significant progress in enhancing the accuracy and efficiency of fraud detection systems in smart grids.
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