Artificial bee colony

人工蜂群
  • 文章类型: Journal Article
    分析用作饮用水和灌溉水源的地下水的变化对于监测含水层至关重要,规划水资源,能源生产,应对气候变化,和农业生产。因此,有必要对地下水位(GWL)波动进行建模以监测和预测地下水储量。基于人工智能的水资源管理模型由于在水文研究中获得了成功而变得普遍。本研究提出了一种结合人工神经网络(ANN)和人工蜂群优化(ABC)算法的混合模型,随着整体经验模式分解(EEMD)和局部均值分解(LMD)技术的发展,模拟埃尔祖鲁姆省的地下水位,蒂尔基耶.GWL估计结果采用均方误差(MSE)进行评估,决定系数(R2),和残差平方和(RSS),并在视觉上与小提琴,分散,和时间序列图。研究结果表明,EEMD-ABC-ANN混合模型在估计GWL方面优于其他模型,R2值范围为0.91至0.99,MSE值范围为0.004至0.07。还表明,可以使用先前的GWL数据进行有希望的GWL预测。
    Analysis of the change in groundwater used as a drinking and irrigation water source is of critical importance in terms of monitoring aquifers, planning water resources, energy production, combating climate change, and agricultural production. Therefore, it is necessary to model groundwater level (GWL) fluctuations to monitor and predict groundwater storage. Artificial intelligence-based models in water resource management have become prevalent due to their proven success in hydrological studies. This study proposed a hybrid model that combines the artificial neural network (ANN) and the artificial bee colony optimization (ABC) algorithm, along with the ensemble empirical mode decomposition (EEMD) and the local mean decomposition (LMD) techniques, to model groundwater levels in Erzurum province, Türkiye. GWL estimation results were evaluated with mean square error (MSE), coefficient of determination (R2), and residual sum of squares (RSS) and visually with violin, scatter, and time series plot. The study results indicated that the EEMD-ABC-ANN hybrid model was superior to other models in estimating GWL, with R2 values ranging from 0.91 to 0.99 and MSE values ranging from 0.004 to 0.07. It has also been revealed that promising GWL predictions can be made with previous GWL data.
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  • 文章类型: Journal Article
    近年来,我们的世界很难满足人类的需求。为了确保世界能够在自然资源方面维持其可居住性和自给自足,要求生物承载力面积总量等于或高于生态足迹。已经进行了一项分析研究,通过利用土耳其的这些信息来弥补生物容量不足,然后使用启发式优化技术对这些区域进行优化。因此,人工蜂群在最小值方面比粒子群优化和基于聚类和抛物线逼近的全局优化方法提供了更好的目标函数结果(误差更少),最大值,平均值,和标准偏差。根据2016年生物净度区现状,变化率为277.97%,30.28%,-29.28%,14.97%,农田为-44.85%,放牧的土地,林地,渔场,和建成用地。根据人口的增长,这些比率应另外变化83.24%,-0.69%,3.97%,6.22%,和2050年分别为-14.24%。开发的模型可用于工业或政府发展政策框架内,因此可以控制生态足迹和生物承载力之间的平衡。
    Our world has had difficulty meeting humans\' needs in recent years. To ensure that the world can sustain its inhabitability and self-sufficiency in terms of natural resources, it is required to make the total amount of biocapacity areas equal to or higher than the ecological footprint. An analytical study has been carried out to remedy the biocapacity deficit by utilizing this information for Turkey and then these areas are optimized with heuristic optimization techniques. As a result, Artificial Bee Colony provides better objective function results (fewer errors) compared to Particle Swarm Optimization and Global Optimization Method Based on Clustering and Parabolic Approximation in terms of minimum, maximum, average value, and standard deviation. The rates of change according to the current situation of the biocapacity areas in 2016 are 277.97 %, 30.28 %, -29.28 %, 14.97 %, and -44.85 % for cropland, grazing land, forestland, fishing grounds, and built-up land, respectively. Depending on the population growth, these rates should additionally change by 83.24 %, -0.69 %, 3.97 %, 6.22 %, and -14.24 % respectively in 2050. The developed model can be used in industry or within the frame of government development policy and thus the balance between ecological footprint and biocapacity can be kept under control.
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  • 文章类型: Journal Article
    背景:牙颌面畸形是常见的问题。正畸-正颌手术是主要治疗方法,但准确的诊断和仔细的手术计划对于最佳结果至关重要。本研究旨在建立并验证基于机器学习的牙颌面畸形治疗决策支持系统。
    方法:纳入2015年1月至2020年8月期间接受螺旋CT检查的骨颌面畸形患者(n=574),根据五种不同的机器学习算法训练诊断模型;将诊断表现与专家诊断进行比较。准确性,灵敏度,特异性,计算曲线下面积(AUC)。采用自适应人工蜂群算法制定正颌手术计划,随后由颌面外科医生对50例患者进行评估。客观评估包括生成的人工智能(AI)与患者实际手术计划之间的骨骼位置差异,以及术后头颅测量分析结果的差异。
    结果:二元相关性极值梯度提升模型表现最好,6种不同类型的颌面畸形的诊断成功率>90%;例外是上颌骨过度发育(89.27%)。所有诊断类型的AUC>0.88。手术计划的中位数为9分,并且在人机交互后得到了改善。实际组和AI组之间没有统计学上的显著差异。
    结论:机器学习算法对于牙颌面畸形的诊断和手术计划是有效的,有助于提高诊断效率。尤其是在较低的医疗中心。
    BACKGROUND: Dento-maxillofacial deformities are common problems. Orthodontic-orthognathic surgery is the primary treatment but accurate diagnosis and careful surgical planning are essential for optimum outcomes. This study aimed to establish and verify a machine learning-based decision support system for treatment of dento-maxillofacial malformations.
    METHODS: Patients (n = 574) with dento-maxillofacial deformities undergoing spiral CT during January 2015 to August 2020 were enrolled to train diagnostic models based on five different machine learning algorithms; the diagnostic performances were compared with expert diagnoses. Accuracy, sensitivity, specificity, and area under the curve (AUC) were calculated. The adaptive artificial bee colony algorithm was employed to formulate the orthognathic surgical plan, and subsequently evaluated by maxillofacial surgeons in a cohort of 50 patients. The objective evaluation included the difference in bone position between the artificial intelligence (AI) generated and actual surgical plans for the patient, along with discrepancies in postoperative cephalometric analysis outcomes.
    RESULTS: The binary relevance extreme gradient boosting model performed best, with diagnostic success rates > 90% for six different kinds of dento-maxillofacial deformities; the exception was maxillary overdevelopment (89.27%). AUC was > 0.88 for all diagnostic types. Median score for the surgical plans was 9, and was improved after human-computer interaction. There was no statistically significant difference between the actual and AI- groups.
    CONCLUSIONS: Machine learning algorithms are effective for diagnosis and surgical planning of dento-maxillofacial deformities and help improve diagnostic efficiency, especially in lower medical centers.
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  • 文章类型: Journal Article
    在玉米收割机的驱动系统中提取轴承信号的最佳模式是一项具有挑战性的任务。此外,故障诊断模型的准确性和鲁棒性较低。因此,提出了一种以最优模态分量为输入特征的故障诊断方法。首先,根据人工蜂群(ABC)搜索的最佳参数,通过变分模式分解(VMD)对振动信号进行分解。此外,使用评估函数筛选关键组件,该评估函数是排列熵的融合,信噪比,和功率谱密度加权。然后使用Stockwell变换将滤波后的模态分量转换为时频图像。最后,优化了EfficientNet网络的MBConv数量和激活函数,并将时频图像导入到优化的网络模型中进行故障诊断。对比实验表明,该方法能够准确提取最优模态分量,故障分类准确率大于98%。
    The extraction of the optimal mode of the bearing signal in the drive system of a corn harvester is a challenging task. In addition, the accuracy and robustness of the fault diagnosis model are low. Therefore, this paper proposes a fault diagnosis method that uses the optimal mode component as the input feature. The vibration signal is first decomposed by variational mode decomposition (VMD) based on the optimal parameters searched by the artificial bee colony (ABC). Moreover, the key components are screened using an evaluation function that is a fusion of the arrangement entropy, the signal-to-noise ratio, and the power spectral density weighting. The Stockwell transform is then used to convert the filtered modal components into time-frequency images. Finally, the MBConv quantity and activation function of the EfficientNet network are optimized, and the time-frequency pictures are imported into the optimized network model for fault diagnosis. The comparative experiments show that the proposed method accurately extracts the optimal modal component and has a fault classification accuracy greater than 98%.
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  • 文章类型: Journal Article
    热量传递发生在我们日常生活的各个方面。很多情况下,比如能量转换工厂,加热装置,和冷却系统,专注于传热。传热的主题之一是层流问题的边界层。在这项研究中,使用了众所周知的探索性算法来求解平板上的流动。使用的算法是遗传算法(GA),粒子群优化(PSO),模拟退火(SA),连续域的蚁群优化(ACOR),人工蜂群(ABC),和萤火虫算法(FA)。这三个属性,层状边界的层厚度,热通量,和前缘的距离,是优化的。每个属性在三个条件下确定;最少,最大值,和目标。结果表明,粒子群算法,SA,ABC,和FA算法比GA和ACOR算法更适合。还确定了在FA和SA算法中处理时间长。研究结果表明,启发式算法可以在传热问题中找到全局结果或接近全局结果的结果。
    Heat transfer takes place in every aspect of our daily life. Many situations, such as energy conversion plants, heating devices, and cooling systems, focus on heat transfer. One of the subjects in heat transfer is the boundary layer of the laminar flow problem. Well-known exploratory algorithms are used to solve for the flow on a flat plate in this study. The algorithms used are genetic algorithm (GA), particle swarm optimization (PSO), simulated annealing (SA), ant colony optimization for continuous domains (ACOR), artificial bee colony (ABC), and firefly algorithm (FA). The three properties, the layer thickness of the laminar boundary, heat flux, and the distance of the leading edge, are optimized. Each property is determined in three conditions; minimum, maximum, and target. The results showed that PSO, SA, ABC, and FA algorithms were more suitable than GA and ACOR algorithms. It has also been determined that the processing times are long in the FA and SA algorithms. The findings show that heuristic algorithms can find global results or results close to global results in heat transfer problems.
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  • 文章类型: Journal Article
    对作为主要皮肤癌类型的黑素瘤的准确和及时识别的需求每天都在增加。由于现代工具和计算机视觉技术的出现,进行分析变得更加容易。皮肤癌分类和分割技术需要与背景分离的清晰病变以获得有效的结果。许多研究部分解决了这个问题。然而,在这个领域有很多新的研究空间。最近,已经提出了许多算法来预处理皮肤病变,帮助分割算法产生有效的结果。自然启发算法和元启发式算法有助于估计搜索空间中的最佳参数集。本文提出了一种混合元启发式预处理器,BA-ABC,通过增强对比度和保持亮度来提高图像质量。统计转换函数,这有助于提高对比度,基于通过所提出的混合元启发式模型为数据集中的每个图像估计的参数集。出于实验目的,我们利用了三个公开的数据集,ISIC-2016、2017和2018。通过一些最先进的分割算法验证了所提出模型的有效性。边界估计算法和性能矩阵的可视化结果验证了所提出的模型的良好性能。所提出的模型将结果中的骰子系数提高到94.6%。
    The demand for the accurate and timely identification of melanoma as a major skin cancer type is increasing daily. Due to the advent of modern tools and computer vision techniques, it has become easier to perform analysis. Skin cancer classification and segmentation techniques require clear lesions segregated from the background for efficient results. Many studies resolve the matter partly. However, there exists plenty of room for new research in this field. Recently, many algorithms have been presented to preprocess skin lesions, aiding the segmentation algorithms to generate efficient outcomes. Nature-inspired algorithms and metaheuristics help to estimate the optimal parameter set in the search space. This research article proposes a hybrid metaheuristic preprocessor, BA-ABC, to improve the quality of images by enhancing their contrast and preserving the brightness. The statistical transformation function, which helps to improve the contrast, is based on a parameter set estimated through the proposed hybrid metaheuristic model for every image in the dataset. For experimentation purposes, we have utilised three publicly available datasets, ISIC-2016, 2017 and 2018. The efficacy of the presented model is validated through some state-of-the-art segmentation algorithms. The visual outcomes of the boundary estimation algorithms and performance matrix validate that the proposed model performs well. The proposed model improves the dice coefficient to 94.6% in the results.
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  • 文章类型: Journal Article
    在本文中,提出了一种方法和优化方法,该方法使用人工蜂群(ABC)算法对印度一些智能城市的光伏(PV)系统进行生命周期成本(LCC)评估。智慧城市是利用太阳能光伏系统和其他先进创新的城市地区。应该知道在特别是智慧城市中,由于太阳能发电而获得和不获得碳信用的生命周期成本。智慧城市旨在帮助当地机构评估其目前的能源消耗和未来需求。本文还重点研究了光伏发电,储蓄,效率和成本。根据不同的现场条件,选择了四个智能城市进行LCC估算。结果表明,在斯利那加,能源生产是最大的,即,435MWh,LCC最低为4.1.25亿卢比,回报率为8.9%。因此,在20年的生命周期中,智能光伏系统每年的净二氧化碳减排量在总热能上为76.5tCO2e,在总火用增益上为17.7tCO2e。采用ABC算法对不同年份的智能光伏系统LCC进行了估算和优化,结果显示LCC降低了50.24%。根据提议的方法,具有智能光伏系统的智能城市的未来机会可以揭示。
    In this paper, a methodology and optimization using the artificial bee colony (ABC) algorithm for life cycle cost (LCC) assessment of photovoltaic (PV) system for some Indian smart cities have been presented. Smart cities are the urban areas that utilize solar power PV system with other advanced innovations. The life cycle cost with and without carbon credit earned due to solar power generation in particular smart city should be known. Smart cities aim to assist local bodies in assessing their present energy consumption and future demand. This paper also focuses on PV energy generation, savings, and efficiency with cost. Four smart cities have been selected for LCC estimation on different field condition basis. The results show that in Srinagar, energy production is maximum, i.e., 435MWh, and LCC is minimum INR4125 million with an 8.9% rate of return on it. Therefore, net carbon dioxide emission reduction per annum for smart PV system over a lifetime of 20 years is 76.5 tCO2e on the overall thermal energy and 17.7 tCO2e on the overall exergy gain. LCC of smart PV system for different years has been estimated and optimized using the ABC algorithm, and the results show a 50.24% reduction in LCC. With the proposed approach, future opportunities for smart cities with smart PV system can be revealed.
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  • 文章类型: Journal Article
    心血管疾病是世界范围内死亡的主要原因之一,可以通过使用听诊器听心跳声音的杂音来轻松诊断。杂音声音发生在Lub-Dub,这表明心脏有异常。然而,使用听诊器听心跳声音需要长时间的训练,然后只有医生才能检测到杂音。现有的研究表明,年轻的医生在这种心音检测中面临困难。使用计算机化方法和数据分析来检测和分类心跳声音将提高声音检测的整体质量。许多研究已经对心跳声音进行了分类;然而,他们缺乏高精度的方法。因此,本研究旨在通过人工蜂群(ABC)使用新型优化的自适应神经模糊推理系统(ANFIS)对心跳声音进行分类。数据被清理,预处理,和MFCC从心跳声音中提取。然后使用提出的ABC-ANFIS来运行预处理后的心跳声音,并计算模型的准确性。结果表明,提出的ABC-ANFIS模型对杂音类的准确率达到93%。与ANFIS相比,拟议的ABC-ANFIS具有更高的准确性,PSOANFIS,SVM,KSTM,KNN,和其他现有的研究。因此,这项研究可以帮助医生对心跳声音进行分类,以检测早期的心血管疾病。
    Cardiovascular disease is one of the main causes of death worldwide which can be easily diagnosed by listening to the murmur sound of heartbeat sounds using a stethoscope. The murmur sound happens at the Lub-Dub, which indicates there are abnormalities in the heart. However, using the stethoscope for listening to the heartbeat sound requires a long time of training then only the physician can detect the murmuring sound. The existing studies show that young physicians face difficulties in this heart sound detection. Use of computerized methods and data analytics for detection and classification of heartbeat sounds will improve the overall quality of sound detection. Many studies have been worked on classifying the heartbeat sound; however, they lack the method with high accuracy. Therefore, this research aims to classify the heartbeat sound using a novel optimized Adaptive Neuro-Fuzzy Inferences System (ANFIS) by artificial bee colony (ABC). The data is cleaned, pre-processed, and MFCC is extracted from the heartbeat sounds. Then the proposed ABC-ANFIS is used to run the pre-processed heartbeat sound, and accuracy is calculated for the model. The results indicate that the proposed ABC-ANFIS model achieved 93% accuracy for the murmur class. The proposed ABC-ANFIS has higher accuracy in compared to ANFIS, PSO ANFIS, SVM, KSTM, KNN, and other existing studies. Thus, this study can assist physicians to classify heartbeat sounds for detecting cardiovascular disease in the early stages.
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  • 文章类型: Journal Article
    特征选择(FS)是机器学习中一种流行的数据预处理技术,用于提取最佳特征以保持或提高数据集的分类精度,这是一个组合优化问题,需要强大的优化器来获得最佳子集。均衡优化器(EO)是一种最新的基于物理的元启发式算法,对各种优化问题具有良好的性能,但是在特征选择中可能会过早或局部收敛。这项工作提出了一种具有人工蜂群的自适应量子EO,用于特征选择,名为SQEOABC。在提出的算法中,将量子理论和自适应机制引入到EO的更新规则中,以增强收敛性,并且来自人工蜂群的更新机制也被纳入EO以实现适当的FS解决方案。在实验中,调查了来自UCI存储库的25个基准数据集,以验证SQEOABC,将其与几种最先进的元启发式算法和EO的变体进行比较。适应度值和准确性的统计结果表明,SQEOABC比比较算法和EO变体具有更好的性能。最后,来自COVID-19的一个现实世界的FS问题说明了SQEOABC的有效性和优越性。
    Feature selection (FS) is a popular data pre-processing technique in machine learning to extract the optimal features to maintain or increase the classification accuracy of the dataset, which is a combinatorial optimization problem, requiring a powerful optimizer to obtain the optimum subset. The equilibrium optimizer (EO) is a recent physical-based metaheuristic algorithm with good performance for various optimization problems, but it may encounter premature or the local convergence in feature selection. This work presents a self-adaptive quantum EO with artificial bee colony for feature selection, named SQEOABC. In the proposed algorithm, the quantum theory and the self-adaptive mechanism are employed into the updating rule of EO to enhance convergence, and the updating mechanism from the artificial bee colony is also incorporated into EO to achieve appropriate FS solutions. In the experiments, 25 benchmark datasets from the UCI repository are investigated to verify SQEOABC, which is compared with several state-of-the-art metaheuristic algorithms and the variants of EO. The statistical results of fitness values and accuracy demonstrate that SQEOABC has better performance than the compared algorithms and the variants of EO. Finally, a real-world FS problem from COVID-19 illustrates the effectiveness and superiority of SQEOABC.
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  • 文章类型: Journal Article
    使用模糊C均值(FCM)进行聚类是一种软分割方法,已在图像分割中得到广泛研究并成功实现。FCM在各个方面都很有用,如灰度图像的分割。然而,FCM在选择初始聚类中心方面存在一定的局限性。它很容易陷入局部最优,对噪声敏感,这被认为是FCM聚类算法中最具挑战性的问题。本文提出了一种分两个阶段解决FCM问题的方法。首先,改进的全局最佳引导人工蜂群算法(IABC)的探索与开发之间的平衡。这是使用称为PIABC的新搜索概率模型实现的,该模型通过选择直接影响IABC开采过程的最佳食物来源来改善勘探过程。其次,基于PIABC的模糊聚类算法,缩写为PIABC-FCM,使用PIABC的平衡来避免陷入局部最优,同时搜索具有一组FCM集群中心位置的最佳解决方案。使用灰度图像对所提出的方法进行了评估。与其他相关工作相比,所提出的方法的性能显示出有希望的结果。
    Clustering using fuzzy C-means (FCM) is a soft segmentation method that has been extensively investigated and successfully implemented in image segmentation. FCM is useful in various aspects, such as the segmentation of grayscale images. However, FCM has some limitations in terms of its selection of the initial cluster center. It can be easily trapped into local optima and is sensitive to noise, which is considered the most challenging issue in the FCM clustering algorithm. This paper proposes an approach to solve FCM problems in two phases. Firstly, to improve the balance between the exploration and exploitation of improved global best-guided artificial bee colony algorithm (IABC). This is achieved using a new search probability model called PIABC that improves the exploration process by choosing the best source of food which directly affects the exploitation process in IABC. Secondly, the fuzzy clustering algorithm based on PIABC, abbreviated as PIABC-FCM, uses the balancing of PIABC to avoid getting stuck into local optima while searching for the best solution having a set of cluster center locations of FCM. The proposed method was evaluated using grayscale images. The performance of the proposed approach shows promising outcomes when compared with other related works.
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