artificial neural network

人工神经网络
  • 文章类型: Journal Article
    确定油田开发计划的最关键方面是石油采收率(RF)。然而,RF与储层岩石和流体性质有着复杂的关系。人工神经网络的应用能够在影响采收率的储层参数之间产生复杂的相关性。本研究提供了一种新的方法来提高神经网络模型的准确性,包括去除离群数据,选择输入参数,选择传递函数,选择神经元的数量,并确定隐藏层。通过应用这些步骤,选择了一个ANN模型,该模型具有9个输入参数,包括油粘度,含水饱和度,初始油形成体积因子,地层厚度,初始压力,渗透性,石油的比重,孔隙度,原油到位。此外,根据相关系数,正切S形传递函数,30个神经元,并确定了两个隐藏层。与先前的相关性相比,所提出的ANN相关性给出了最好的准确性。这由0.91657的最高相关系数证明。
    The most crucial aspect in determining field development plans is the oil recovery factor (RF). However, RF has a complex relationship with the reservoir rock and fluid properties. The application of artificial neural networks is able to produce complex correlations between reservoir parameters that affect the recovery factor. This research provides a new approach to improve the accuracy of the ANN model in the form of steps including removing outlier data, selecting input parameters, selecting transferring functions, selecting the number of neurons, and determining hidden layers. By applying these steps, an ANN model was selected with nine input parameters consisting of oil viscosity, water saturation, initial oil formation volume factor, formation thickness, initial pressure, permeability, specific gravity of oil, porosity, and original oil in place. Furthermore, based on the correlation coefficient, a tangent sigmoid transferring function, 30 neurons, and two hidden layers were determined. The proposed ANN correlation gives the best accuracy compared to the previous correlations. This is proved by the highest correlation coefficient of 0.91657.
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  • 文章类型: Journal Article
    Abbay河流域面临着迫在眉睫的极端气候事件的威胁,包括长期干旱和不稳定的降雨模式,会显著影响土壤健康和肥力。本研究旨在探讨极端气候条件对土壤pH值和交换性铝的影响,旨在促进埃塞俄比亚的可持续农业实践。非洲土壤信息服务(ASIS)提供了有关土壤pH值和可交换铝的数据集。欧洲哥白尼气候变化数据存储用于分别下载1980年至2010年和2015年至2050年的历史和未来极端气候指数数据集。耦合模型比较项目第6阶段模型集合用于预测三种共同的社会经济情景下的未来气候影响:SSP1-2.6,SSP2-4.3和SSP5-8.5。数据提取,质量控制,在分析之前进行聚类,并验证了该模型在预测土壤参数变化方面的准确性和可靠性。利用人工神经网络模型来预测极端气候指数对土壤pH和可交换铝浓度的影响。该模型旨在准确可靠地预测土壤参数的变化。本研究使用配对t检验比较了土壤pH和铝浓度的变化。模型的诊断结果表明,极端气候情景对土壤pH值和可交换铝有显著影响。极端气候因素,例如强降水和夜间温度较低,会导致土壤酸化和铝浓度增加。在SSP1-2.6和SSP2-4.5排放方案下,土壤pH值预计分别增加8.38%和3.79%,分别。土壤pH值的这些变化预计会对土壤中的可交换铝含量产生重大影响,分别增长37%和5.38%,分别,在相同的排放情景下。然而,SSP5.8情景预测可交换铝增加45%,土壤pH降低9.36%。因此,这项研究大大增强了我们对气候变化对土壤健康影响的理解。制定减轻气候变化对该区域农业影响的战略必须考虑极端气候指数的影响。
    The Abbay River Basin faces the looming threat of extreme climate events, including prolonged droughts and erratic rainfall patterns, which can significantly affect soil health and fertility. This study aimed to explore the influence of extreme climate conditions on soil pH and exchangeable aluminum, aiming to promote sustainable agricultural practices in Ethiopia. The Africa Soil Information Service (ASIS) provided datasets on soil pH and exchangeable aluminum. The European Copernicus Climate Change Data Store was used to download historical and future datasets of extreme climatic indices from 1980 to 2010 and 2015-2050, respectively. The Coupled Model Intercomparison Project Phase 6 model ensemble was used to predict future climate impacts under three shared socioeconomic scenarios: SSP1-2.6, SSP2-4.3, and SSP5-8.5. Data extraction, quality control, and clustering were conducted before analysis, and the model was validated for its accuracy and reliability in predicting soil parameter changes. An artificial neural network model was utilized to predict the effects of extreme climate indices on soil pH and exchangeable aluminum concentrations. The model was designed to accurately and reliably predict changes in soil parameters. This study compared the changes in soil pH and aluminum concentrations using paired t tests. The model\'s diagnostic results indicated a significant impact of extreme climate scenarios on soil pH and exchangeable aluminum. Extreme climate factors such as heavy precipitation and cooler night time temperatures significantly contribute to soil acidification and an increase in aluminum concentration. Under the SSP1-2.6 and SSP2-4.5 emission scenarios, soil pH levels are expected to increase by 8.38 % and 3.79 %, respectively. These changes in soil pH are expected to have significant impacts on the exchangeable aluminum content in the soil, with increases of 37 % and 5.38 %, respectively, under the same emission scenarios. However, the SSP5.8 scenario predicted a 45 % increase in exchangeable aluminum and a 9.36 % decrease in soil pH. Therefore, this study significantly enhances our understanding of the influence of climate change on soil health. The development of strategies to mitigate climate change impacts on agriculture in the region must consider the effects of extreme climate indices.
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  • 文章类型: Journal Article
    使用光伏(PV)技术的发电系统由于其高生产效率而变得越来越流行。局部着色缺陷是本系统在生产过程中最常见的缺陷,减少产生的能量的数量和质量。本文提出了一种基于人工神经网络和金鹰优化的故障预测及其在独立光伏系统中的检测,以恢复光伏系统的最佳性能和诊断。所提出的技术结合了人工神经网络(ANN)和金鹰优化(GEO)算法。这项工作的主要贡献是提高光伏系统的性能。结果是在使用ANN的分类和识别中存在缺陷。GEO的使用为神经网络训练提供了一种有效的优化技术,缩短了训练时间,提高了模型的准确性。所提出的技术在MATLAB网站上执行,并与不同的现有技术进行对比,像遗传算法(GA),大象群优化(EHO)和粒子群优化(PSO).研究结果表明,所提出的技术比现有的检测和诊断光伏系统缺陷的方法更准确和有效。
    Power generation systems using photovoltaic (PV) technology have become increasingly popular due to their high production efficiency. A partial shading defect is the most common defect in this system under the process of production, diminishing both the amount and quality of energy produced. This paper proposes an Artificial Neural Network and Golden Eagle Optimization based prediction of the fault and its detection in a standalone PV system to recover the optimum performance and diagnosis of the PV system. The proposed technique combines the Artificial Neural Network (ANN) and Golden Eagle Optimization (GEO) algorithm. The major contribution of this work is to raise PV systems\' performance. The result is a defect in the classification and identification of an ANN is used. The use of GEO provides an efficient optimization technique for ANN training, which reduces the training time and improves the accuracy of the model. The proposed technique is executed on the MATLAB site and contrasted with different present techniques, like genetic algorithm (GA),Elephant Herding Optimization (EHO) and Particle Swarm Optimization (PSO). The findings displays that the proposed technique is more accurate and effective than the existing methodologies for detecting and diagnosing defects in PV systems.
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  • 文章类型: Journal Article
    黄芩(SR),来源于黄芩的根,是一种清热凉血的传统中药。它已被用作传统草药,并在当今的亚洲国家中作为功能性食品而流行。
    在这项研究中,UPLC-Q-TOF-MS首次用于鉴定SR乙醇提取物中的化学成分。然后,采用星点设计-响应面法对提取工艺进行了优化。建立了不同批次和加工产品的指纹图谱,和化学标记物通过各种人工神经网络模型的组合进行筛选。最后,网络药理学和分子模拟技术用于验证以确定质量标记。
    共鉴定出SR中的35种化学成分,并确定最佳提取工艺为:用80%甲醇以120:1的比例超声提取70分钟,浸泡时间为30分钟。通过使用各种人工神经网络模型的判别分析,SR的样品可以根据其生长年限分为两类:库琴(较老植物的干燥根)和紫琴(较年轻植物的根)。此外,每个类别中的样本可以根据其来源进一步聚类。SR的四种不同的加工产品也可以分别区分。最后,通过网络药理学和分子模拟技术的整合,确定黄芩苷,黄芩素,Wogonin,诺沃金宁,去甲Wogonin-8-O-葡糖苷酸,黄芩黄酮II,hispidulin,8,8“-bibaicalein,和OxylinA-7-O-β-D-葡糖苷酸可以作为SR的质量标记。
    影响SR质量的主要因素是其生长年限。SR的地理起源被确定为影响其质量的次要因素。加工对其质量也有很大影响。选定的质量标记为SR的质量控制奠定了基础,这一研究策略也为提高中药质量提供了研究范式。
    UNASSIGNED: Scutellariae Radix (SR), derived from the root of Scutellaria baicalensis Georgi, is a traditional Chinese medicine (TCM) for clearing heat and cooling blood. It has been used as a traditional herbal medicine and is popular as a functional food in Asian countries today.
    UNASSIGNED: In this study, UPLC-Q-TOF-MS was first employed to identify the chemical components in the ethanol extract of SR. Then, the extraction process was optimized using star point design-response surface methodology. Fingerprints of different batches and processed products were established, and chemical markers were screened through a combination of various artificial neural network models. Finally, network pharmacology and molecular simulation techniques were utilized for verification to determine the quality markers.
    UNASSIGNED: A total of 35 chemical components in SR were identified, and the optimal extraction process was determined as follows: ultrasonic extraction with 80% methanol at a ratio of 120:1 for 70 minutes, with a soaking time of 30 minutes. Through discriminant analysis using various artificial neural network models, the samples of SR could be classified into two categories based on their growth years: Kuqin (dried roots of older plants) and Ziqin (roots of younger plants). Moreover, the samples within each category could be further clustered according to their origins. The four different processed products of SR could also be distinguished separately. Finally, through the integration of network pharmacology and molecular simulation techniques, it was determined that baicalin, baicalein, wogonin, norwogonin, norwogonin-8-O-glucuronide, skullcapflavone II, hispidulin, 8, 8\"-bibaicalein, and oroxylin A-7-O-beta-D-glucuronide could serve as quality markers for SR.
    UNASSIGNED: The primary factors affecting the quality of SR were its growth years. The geographic origin of SR was identified as a secondary factor affecting its quality. Processing also had a significant impact on its quality. The selected quality markers have laid the foundation for the quality control of SR, and this research strategy also provides a research paradigm for improving the quality of TCM.
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  • 文章类型: Journal Article
    背景:瘢痕疙瘩是一种以皮肤组织愈合后纤维组织增生为特征的疾病,严重影响患者的日常生活。然而,瘢痕疙瘩的临床治疗仍有局限性,也就是说,它不能有效控制瘢痕疙瘩,导致高复发率。因此,迫切需要识别新的特征以改善瘢痕疙瘩的诊断和治疗。
    方法:从GEO数据库下载BulkRNAseq和scRNAseq数据。首先,我们使用WGCNA和MEGENA共同鉴定瘢痕疙瘩/免疫相关DEG。随后,我们使用了三种机器学习算法(Randomforest,SVM-RFE,和LASSO)以鉴定瘢痕疙瘩(KHIGs)的枢纽免疫相关基因,并使用scRNA-seq研究成纤维细胞亚群分化过程中KHIGs的异质表达。最后,我们用HE和Masson染色,定量逆转录-PCR,西方印迹,免疫组织化学,和免疫荧光法研究维甲酸在瘢痕疙瘩中的表达异常及其机制。
    结果:在本研究中,我们确定了PTGFR,RBP5和LIF作为KHIGs,并验证了它们的诊断性能。随后,我们基于KHIGs的转录组模式构建了一种新的人工神经网络分子诊断模型,有望突破目前临床上瘢痕疙瘩分子诊断面临的困境。同时,构建的IG评分还可以有效预测瘢痕疙瘩风险,这为瘢痕疙瘩的预防提供了新的策略。此外,我们观察到KHIGs也在成纤维细胞亚型的分化轨迹中异质表达,这可能会影响成纤维细胞亚型的分化,从而导致瘢痕疙瘩免疫微环境的失调。最后,我们发现维甲酸可能通过抑制RBP5将促炎性成纤维细胞(PIF)分化为间充质成纤维细胞(MF)来治疗或减轻瘢痕疙瘩,这进一步减少了胶原蛋白的分泌。
    结论:总之,本研究提供了新的免疫特征(PTGFR,RBP5和LIF)用于瘢痕疙瘩的诊断和治疗,并确定视黄酸是潜在的抗瘢痕疙瘩药物。更重要的是,我们为理解瘢痕疙瘩中不同成纤维细胞亚型之间的相互作用及其免疫微环境的重塑提供了新的视角。
    BACKGROUND: Keloid is a disease characterized by proliferation of fibrous tissue after the healing of skin tissue, which seriously affects the daily life of patients. However, the clinical treatment of keloids still has limitations, that is, it is not effective in controlling keloids, resulting in a high recurrence rate. Thus, it is urgent to identify new signatures to improve the diagnosis and treatment of keloids.
    METHODS: Bulk RNA seq and scRNA seq data were downloaded from the GEO database. First, we used WGCNA and MEGENA to co-identify keloid/immune-related DEGs. Subsequently, we used three machine learning algorithms (Randomforest, SVM-RFE, and LASSO) to identify hub immune-related genes of keloid (KHIGs) and investigated the heterogeneous expression of KHIGs during fibroblast subpopulation differentiation using scRNA-seq. Finally, we used HE and Masson staining, quantitative reverse transcription-PCR, western blotting, immunohistochemical, and Immunofluorescent assay to investigate the dysregulated expression and the mechanism of retinoic acid in keloids.
    RESULTS: In the present study, we identified PTGFR, RBP5, and LIF as KHIGs and validated their diagnostic performance. Subsequently, we constructed a novel artificial neural network molecular diagnostic model based on the transcriptome pattern of KHIGs, which is expected to break through the current dilemma faced by molecular diagnosis of keloids in the clinic. Meanwhile, the constructed IG score can also effectively predict keloid risk, which provides a new strategy for keloid prevention. Additionally, we observed that KHIGs were also heterogeneously expressed in the constructed differentiation trajectories of fibroblast subtypes, which may affect the differentiation of fibroblast subtypes and thus lead to dysregulation of the immune microenvironment in keloids. Finally, we found that retinoic acid may treat or alleviate keloids by inhibiting RBP5 to differentiate pro-inflammatory fibroblasts (PIF) to mesenchymal fibroblasts (MF), which further reduces collagen secretion.
    CONCLUSIONS: In summary, the present study provides novel immune signatures (PTGFR, RBP5, and LIF) for keloid diagnosis and treatment, and identifies retinoic acid as potential anti-keloid drugs. More importantly, we provide a new perspective for understanding the interactions between different fibroblast subtypes in keloids and the remodeling of their immune microenvironment.
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  • 文章类型: Journal Article
    背景:肝细胞癌(HCC)的特点是发病机制复杂,有限的治疗方法,预后不良。内质网应激(ERS)在肝癌的发生、发展中起着重要作用。因此,我们仍需要进一步研究HCC和ERS的分子机制,以便早期诊断和有希望的治疗靶点。
    方法:整合了GEO数据集(GSE25097、GSE62232和GSE65372),以鉴定与HCC相关的差异表达基因(ERSRGs)。随机森林(RF)和支持向量机(SVM)机器学习技术被应用于筛选与内质网应激相关的ERSRGs,建立了人工神经网络(ANN)诊断预测模型。利用ESTIMATE算法分析ERSRGs与免疫微环境的相关性。使用药物特征数据库(DSigDB)探索用于ERSRG的潜在治疗剂。通过单细胞测序和细胞通讯评估ERSRGs中心基因PPP1R16A的免疫学景观,并通过细胞学实验验证了其生物学功能。
    结果:基于SRPX构建了与ERS模型相关的ANN,THBS4,CTH,PPP1R16A,CLGN,和THBS1。模型在训练集中的曲线下面积(AUC)为0.979,三个验证集中的AUC值分别为0.958、0.936和0.970,表明高可靠性和有效性。Spearman相关分析表明,ERSRGs的表达水平与免疫细胞浸润和免疫相关通路显著相关,表明它们作为免疫疗法重要靶点的潜力。根据莫米松的最高结合评分,预测莫米松是最有前途的治疗药物。在六个ERSRG中,PPP1R16A突变率最高,主要是拷贝数突变,这可能是ERSRGs模型的核心基因。单细胞分析和细胞通讯表明,PPP1R16A主要分布在肝脏恶性实质细胞中,可能通过增强巨噬细胞移动抑制因子(MIF)/CD74+CXCR4信号通路重塑肿瘤微环境。功能实验表明,在siRNA敲低后,PPP1R16A的表达下调,抑制了增殖,迁移,HCCLM3和Hep3B细胞的体外侵袭能力。
    结论:各种机器学习算法和人工智能神经网络的共识为诊断与ERS相关的肝癌建立了一种新颖的预测模型。本研究为HCC的诊断和治疗提供了新的方向。
    BACKGROUND: Hepatocellular carcinoma (HCC) is characterized by the complex pathogenesis, limited therapeutic methods, and poor prognosis. Endoplasmic reticulum stress (ERS) plays an important role in the development of HCC, therefore, we still need further study of molecular mechanism of HCC and ERS for early diagnosis and promising treatment targets.
    METHODS: The GEO datasets (GSE25097, GSE62232, and GSE65372) were integrated to identify differentially expressed genes related to HCC (ERSRGs). Random Forest (RF) and Support Vector Machine (SVM) machine learning techniques were applied to screen ERSRGs associated with endoplasmic reticulum stress, and an artificial neural network (ANN) diagnostic prediction model was constructed. The ESTIMATE algorithm was utilized to analyze the correlation between ERSRGs and the immune microenvironment. The potential therapeutic agents for ERSRGs were explored using the Drug Signature Database (DSigDB). The immunological landscape of the ERSRGs central gene PPP1R16A was assessed through single-cell sequencing and cell communication, and its biological function was validated using cytological experiments.
    RESULTS: An ANN related to the ERS model was constructed based on SRPX, THBS4, CTH, PPP1R16A, CLGN, and THBS1. The area under the curve (AUC) of the model in the training set was 0.979, and the AUC values in three validation sets were 0.958, 0.936, and 0.970, respectively, indicating high reliability and effectiveness. Spearman correlation analysis suggests that the expression levels of ERSRGs are significantly correlated with immune cell infiltration and immune-related pathways, indicating their potential as important targets for immunotherapy. Mometasone was predicted to be the most promising treatment drug based on its highest binding score. Among the six ERSRGs, PPP1R16A had the highest mutation rate, predominantly copy number mutations, which may be the core gene of the ERSRGs model. Single-cell analysis and cell communication indicated that PPP1R16A is predominantly distributed in liver malignant parenchymal cells and may reshape the tumor microenvironment by enhancing macrophage migration inhibitory factor (MIF)/CD74 + CXCR4 signaling pathways. Functional experiments revealed that after siRNA knockdown, the expression of PPP1R16A was downregulated, which inhibited the proliferation, migration, and invasion capabilities of HCCLM3 and Hep3B cells in vitro.
    CONCLUSIONS: The consensus of various machine learning algorithms and artificial intelligence neural networks has established a novel predictive model for the diagnosis of liver cancer associated with ERS. This study offers a new direction for the diagnosis and treatment of HCC.
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  • 文章类型: Journal Article
    这项研究调查了轻质高效的吸声候选物,以满足对噪音衰减中可持续和环保材料日益增长的需求。Juncuseffusus(JE)是一种以其独特的三维网络而闻名的天然纤维,提供了一个可行的和可持续的填料增强吸声蜂窝板。制造和设计了包含JE填料的微穿孔板(MPP)蜂窝吸收器,专注于通过改变JE填料密度来优化吸收器设计,几何排列,和MPP参数。在最佳填充密度下,填充有JE纤维的MPP型蜂窝结构在20mm和50mm厚度下实现了0.5和0.7的高降噪系数(NRC),分别。使用分析模型和人工神经网络(ANN)模型,成功预测了这些吸收体的吸声特性。这项研究证明了JE光纤在改善不同行业的噪声缓解策略方面的潜力,为建筑和运输提供更可持续和高效的解决方案。
    This study investigates lightweight and efficient candidates for sound absorption to address the growing demand for sustainable and eco-friendly materials in noise attenuation. Juncus effusus (JE) is a natural fiber known for its unique three-dimensional network, providing a viable and sustainable filler for enhanced sound absorption in honeycomb panels. Microperforated-panel (MPP) honeycomb absorbers incorporating JE fillers were fabricated and designed, focusing on optimizing the absorber designs by varying JE filler densities, geometrical arrangements, and MPP parameters. At optimal filling densities, the MPP-type honeycomb structures filled with JE fibers achieved high noise reduction coefficients (NRC) of 0.5 and 0.7 at 20 mm and 50 mm thicknesses, respectively. Using an analytical model and an artificial neural network (ANN) model, the sound absorption characteristics of these absorbers were successfully predicted. This study demonstrates the potential of JE fibers in improving noise mitigation strategies across different industries, offering more sustainable and efficient solutions for construction and transportation.
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  • 文章类型: Journal Article
    通过热处理调节粉末冶金(P/M)镍基高温合金的微观结构以获得优异的机械性能是涡轮盘设计中的一种普遍方法。然而,在双性能涡轮盘的情况下,热处理过程的复杂性和不均匀性提出了重大挑战。屈服强度的预测通常来自各种热处理方式下的微观结构分析。这种方法很耗时,贵,而精度往往取决于微结构表征的精度。本研究成功地采用了人工神经网络(ANN)和有限元分析(FEA)的耦合方法来揭示热处理工艺与屈服强度之间的关系。耦合方法基于热处理参数(诸如保持温度和冷却速率)准确地预测指定的位置和温度相关的屈服强度。训练集的均方根误差(RMSE)和平均绝对百分比偏差(MAPD)分别为50.37和3.77,while,对于测试集,分别为50.13和3.71。此外,使用Abaqus用户子程序建立了FEA和ANN的集成模型。集成模型可以根据温度计算结果预测屈服强度,并在加载过程模拟中自动更新FEA模型的材料性能。这允许在实际工作条件下准确计算涡轮盘的应力-应变状态,帮助定位应力集中区域,塑性变形,和其他关键区域,为涡轮盘的快速设计提供了新颖可靠的参考。
    Regulating the microstructure of powder metallurgy (P/M) nickel-based superalloys to achieve superior mechanical properties through heat treatment is a prevalent method in turbine disk design. However, in the case of dual-performance turbine disks, the complexity and non-uniformity of the heat treatment process present substantial challenges. The prediction of yield strength is typically derived from the analysis of microstructures under various heat treatment regimes. This method is time-consuming, expensive, and the accuracy often depends on the precision of microstructural characterization. This study successfully employed a coupled method of Artificial Neural Network (ANN) and finite element analysis (FEA) to reveal the relationship between the heat treatment process and yield strength. The coupled method accurately predicted the location specified and temperature-dependent yield strength based on the heat treatment parameters such as holding temperatures and cooling rates. The root mean square error (RMSE) and mean absolute percentage deviation (MAPD) for the training set are 50.37 and 3.77, respectively, while, for the testing set, they are 50.13 and 3.71, respectively. Furthermore, an integrated model of FEA and ANN is established using a Abaqus user subroutine. The integrated model can predict the yield strength based on temperature calculation results and automatically update material properties of the FEA model during the loading process simulation. This allows for an accurate calculation of the stress-strain state of the turbine disk during actual working conditions, aiding in locating areas of stress concentration, plastic deformation, and other critical regions, and provides a novel reliable reference for the rapid design of the turbine disk.
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  • 文章类型: Journal Article
    植物中的微量元素主要来自土壤,通过食物链影响人类健康。因此,了解植物和土壤之间微量元素的关系至关重要。由于植物吸收土壤中的微量元素是一个非线性过程,传统的多元线性回归(MLR)模型无法提供准确的预测。在这种情况下,选择锌(Zn)作为目标元素。利用土壤地球化学数据,人工神经网络(ANN)用于开发预测模型,以准确估计小麦籽粒中的锌含量。总共收集了4036个表层土壤样品和73个配对的根际土壤-小麦样品用于模拟研究。通过皮尔逊相关分析,铁的总元素含量(TCEs),Mn,Zn,P,以及B的元素(ACE)的可用含量,Mo,N,Fe,与锌生物富集因子(BAF)显著相关。经过比较,ANN模型在预测准确性方面优于MLR模型。值得注意的是,使用ACE作为输入因子的预测性能优于使用TCE的预测性能。为了提高准确性,通过多次测试建立了两步模型。首先,使用TCE和根际土壤的性质作为输入因子来预测土壤中的ACE。其次,用ACE作为输入因子预测谷物中的ZnBAF。因此,预测了对应4036个表层土壤样品的小麦籽粒中锌的含量。结果表明,85.69%的土地适合种植富锌小麦。这一发现提供了一种更准确的方法来预测微量元素从土壤到谷物的吸收,这有助于警告谷物中的异常水平,并防止潜在的健康风险。
    Trace elements in plants primarily derive from soils, subsequently influencing human health through the food chain. Therefore, it is essential to understand the relationship of trace elements between plants and soils. Since trace elements from soils absorbed by plants is a nonlinear process, traditional multiple linear regression (MLR) models failed to provide accurate predictions. Zinc (Zn) was chosen as the objective element in this case. Using soil geochemical data, artificial neural networks (ANN) were utilized to develop predictive models that accurately estimated Zn content within wheat grains. A total of 4036 topsoil samples and 73 paired rhizosphere soil-wheat samples were collected for the simulation study. Through Pearson correlation analysis, the total content of elements (TCEs) of Fe, Mn, Zn, and P, as well as the available content of elements (ACEs) of B, Mo, N, and Fe, were significantly correlated with the Zn bioaccumulation factor (BAF). Upon comparison, ANN models outperformed MLR models in terms of prediction accuracy. Notably, the predictive performance using ACEs as input factors was better than that using TCEs. To improve the accuracy, a two-step model was established through multiple testing. Firstly, ACEs in the soil were predicted using TCEs and properties of the rhizosphere soil as input factors. Secondly, the Zn BAF in grains was predicted using ACE as input factors. Consequently, the content of Zn in wheat grains corresponding to 4036 topsoil samples was predicted. Results showed that 85.69 % of the land was suitable for cultivating Zn-rich wheat. This finding offers a more accurate method to predict the uptake of trace elements from soils to grains, which helps to warn about abnormal levels in grains and prevent potential health risks.
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  • 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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