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A game-theoretic approach to pricing electronic components in two traditional and blockchain-based closed-loop supply chains under refurbishment and competition: A case study of mobile phones 在翻新和竞争下,对两个传统和基于区块链的闭环供应链中的电子元件进行定价的博弈论方法:以手机为例研究
IF 3.9 2区 工程技术 Q2 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2026-05-01 Epub Date: 2026-01-11 DOI: 10.1016/j.compchemeng.2026.109562
Hedieh Nazemzadegan , Morteza Rasti-Barzoki , Mohammad-Bagher Jamali , Jörn Altmann
Electronic waste management presents a pressing global challenge. This paper proposes the implementation of blockchain technology as a crucial facilitator for closed-loop waste management systems, leveraging its established effectiveness across various phases of the waste lifecycle. The research investigates the impact of manufacturers' competitiveness on the electronic waste recycling and collection market, with the primary goal of minimizing natural resource depletion. Specifically, this study analyzes electronic component pricing strategies within both traditional and blockchain-enabled closed-loop supply chains (CLSCs) under conditions of market competition and industry restructuring. The problem considers the interactions between manufacturers, blockchain service provider (BSP), and customers, focusing on two distinct CLSCs, each involving a single manufacturer producing a unique product. Key decision variables encompass pricing strategies and the extent of blockchain technology adoption. The problem is addressed through the development of two decentralized and cooperative scenarios. The results indicate that collaboration between the original manufacturer and the BSP yields the most competitive product selling price. Furthermore, the second scenario achieves the highest degree of blockchain technology implementation through cooperative revenue-sharing agreements between the originating manufacturer and the BSP.
电子废物管理是一项紧迫的全球性挑战。本文提出实施区块链技术作为闭环废物管理系统的关键促进者,利用其在废物生命周期各个阶段的既定有效性。本研究以最小化自然资源损耗为主要目标,探讨制造商竞争力对电子废弃物回收收集市场的影响。具体而言,本研究分析了市场竞争和行业重组条件下传统和区块链闭环供应链(CLSCs)中的电子元件定价策略。该问题考虑了制造商、区块链服务提供商(BSP)和客户之间的交互,重点关注两个不同的clsc,每个clsc都涉及生产独特产品的单个制造商。关键的决策变量包括定价策略和区块链技术采用的程度。这个问题是通过开发两个分散和合作的场景来解决的。结果表明,原始制造商与BSP之间的合作产生了最具竞争力的产品销售价格。此外,第二种方案通过原始制造商和BSP之间的合作收益共享协议,实现了区块链技术的最高实施程度。
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引用次数: 0
Unlocking reactive power potential of industrial processes for voltage support through scheduling optimization 通过调度优化解锁电压支持工业过程的无功功率潜力
IF 3.9 2区 工程技术 Q2 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2026-05-01 Epub Date: 2026-02-09 DOI: 10.1016/j.compchemeng.2026.109591
Philipp Glücker , Sonja H.M. Germscheid , Ariana Y. Ojeda-Paredes , Andrea Benigni , Manuel Dahmen , Thiemo Pesch
Demand response of industrial processes generally accounts for active power, but not reactive power which grows in importance for balancing local voltage levels in future electricity grids. We present an optimization-based approach to integrate reactive power into demand response scheduling and derive first estimates on the arising potentials. To this end, we extend a resource-task network scheduling model to account for the reactive power of electrically-powered process tasks, local power converters, and the local power grid. As an illustrative example, we study the multi-step copper production. We find a large achievable range of reactive power provision without compromising production volume or operating cost. Furthermore, we demonstrate how reactive power could be provided as an ancillary service by following a signal. Our results show that penalties or additional investment in compensation devices for power factor correction can be avoided through reactive power control of local power converters. Moreover, we demonstrate that industrial processes with sufficient capacity can alleviate voltage problems in transmission grids. Our work therefore lays the groundwork towards determining the reactive power scheduling potential of power-intensive production processes, and showcases its potential support for the voltage stability of future power grids.
工业过程的需求响应通常占有功功率,但不包括无功功率,而无功功率对于平衡未来电网的局部电压水平越来越重要。我们提出了一种基于优化的方法,将无功功率集成到需求响应调度中,并对产生的潜力进行了初步估计。为此,我们扩展了一个资源任务网络调度模型,以考虑电力过程任务、本地电源转换器和本地电网的无功功率。以多步制铜为例进行了研究。我们发现在不影响产量或运营成本的情况下,无功功率供应的可实现范围很大。此外,我们还演示了如何通过跟踪信号来提供无功功率作为辅助服务。我们的研究结果表明,通过对本地电源变流器的无功功率控制,可以避免对功率因数校正补偿装置的惩罚或额外投资。此外,我们证明了具有足够容量的工业过程可以缓解输电网中的电压问题。因此,我们的工作为确定电力密集型生产过程的无功功率调度潜力奠定了基础,并展示了其对未来电网电压稳定的潜在支持。
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引用次数: 0
Superstructure modeling and optimization of dynamic processes applied to high-performance liquid chromatography with recycling 高效液相色谱循环动力学过程的上层结构建模与优化
IF 3.9 2区 工程技术 Q2 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2026-05-01 Epub Date: 2026-02-06 DOI: 10.1016/j.compchemeng.2026.109586
Dian Ning Chia, Fanyi Duanmu, Eva Sorensen
Optimal design of dynamic processes is far more challenging than steady-state optimization due to the added complexity of time, leading to a highly complex optimization problem. If more than one possible design or operation is also to be considered, a dynamic superstructure approach is more efficient than considering a series of individual dynamic optimizations. This work proposes a four-step methodology to optimize a dynamic chemical process, here applied to high-performance liquid chromatography (HPLC), based on a superstructure approach. HPLC is commonly used to separate valuable pharmaceutical products, normally based on a single-column elution process, although the basic operation can be improved by considering recycling. A superstructure model for a single recycling HPLC column is introduced, capable of handling the conventional elution policy as well as three recycling policies — conventional recycling, peak shaving (PS), and peak shaving with multiple feed injection (PS-MFI). The superstructure methodology is found to be capable of identifying the optimal operating policy for different objective functions, and can save over 60% of the CPU time when compared to the total time needed to carry out individual optimizations for each operating policy.
由于时间的复杂性,动态过程的优化设计比稳态过程的优化设计更具挑战性,导致了一个高度复杂的优化问题。如果还需要考虑多种可能的设计或操作,则动态上层结构方法比考虑一系列单独的动态优化方法更有效。这项工作提出了一个四步的方法来优化动态化学过程,这里应用于高效液相色谱(HPLC),基于上层结构的方法。HPLC通常用于分离有价值的药品,通常基于单柱洗脱过程,尽管可以通过考虑回收来改进基本操作。介绍了一种单循环HPLC柱的上层结构模型,该模型能够处理常规洗脱策略以及三种回收策略-常规回收、调峰(PS)和多次进样调峰(PS- mfi)。研究发现,上层建筑方法能够识别不同目标函数的最佳操作策略,与对每个操作策略进行单独优化所需的总时间相比,可以节省超过60%的CPU时间。
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引用次数: 0
Hybrid approach for comprehensive recognition of line objects contained in high-density piping and instrumentation diagrams using deep learning and rules 基于深度学习和规则的高密度管道和仪表图中线对象综合识别的混合方法
IF 3.9 2区 工程技术 Q2 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2026-05-01 Epub Date: 2026-01-20 DOI: 10.1016/j.compchemeng.2026.109572
Yoochan Moon , Seung-Tae Han , Ji-Beob Kim , Choongsub Yeom , Duhwan Mun
This study presents a hybrid approach for the automated recognition and classification of line objects in piping and instrumentation diagrams (P&IDs), with the goal of supporting the digital transformation of chemical process design and operation. By integrating Deep Learning (DL) techniques with rule-based methods, the proposed approach extracts flow and signal paths from legacy P&ID images, enabling applications such as process simulation, safety verification, and control logic validation. The approach consists of two stages. In the first stage, all line objects in a P&ID are detected and categorized into lines with special signs and continuous lines. A DL model identifies directional arrows and determines the overall flow structure. In the second stage, the continuous lines are further classified into dimension, extension, and leader lines using the rule-based algorithms, according to their functional characteristics. The method was tested on 30 P&ID sheets from Project A and two from Project B. Initially, the model trained on Project A data achieved precision and recall rates of 95.02% and 93.09%, respectively. On Project B, the performance dropped to 88.92% and 84.76% due to domain shift. After applying transfer learning using the four additional Project B sheets, the performance improved to 95.32% precision and 91.55% recall. These results demonstrate the potential of the proposed approach for accurate and scalable conversion of P&ID data into structured formats, contributing to smart plant design and engineering data integration.
本研究提出了一种混合方法,用于管道和仪表图(P&IDs)中线对象的自动识别和分类,目的是支持化学过程设计和操作的数字化转型。通过将深度学习(DL)技术与基于规则的方法相结合,该方法可以从遗留的P&;ID图像中提取流程和信号路径,从而实现过程仿真、安全验证和控制逻辑验证等应用。该方法包括两个阶段。在第一阶段,检测P&;ID中的所有线对象,并将其分类为具有特殊符号的线和连续线。DL模型识别方向箭头并确定整体流结构。第二阶段,根据连续线的功能特征,采用基于规则的算法将连续线进一步划分为维线、延长线和先导线。该方法在项目A的30张P&;ID表和项目b的2张P&;ID表上进行了测试。最初,在项目A数据上训练的模型的准确率和召回率分别达到95.02%和93.09%。在项目B中,由于域移位,性能下降到88.92%和84.76%。在使用额外的四张B项目表应用迁移学习后,性能提高到95.32%的准确率和91.55%的召回率。这些结果证明了所提出的方法将P&;ID数据精确且可扩展地转换为结构化格式的潜力,有助于智能工厂设计和工程数据集成。
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引用次数: 0
Kolmogorov–Arnold network-assisted multi-objective approach for design and optimization of unbaffled stirred tanks 无挡板搅拌槽设计与优化的Kolmogorov-Arnold网络辅助多目标方法
IF 3.9 2区 工程技术 Q2 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2026-05-01 Epub Date: 2026-01-25 DOI: 10.1016/j.compchemeng.2026.109583
Wentao Du , Tingting Liu , Zicheng Meng , Muhammad Waqas Yaqub , Baofeng Wang , Xizhong Chen
Stirred tanks are extensively employed in various industries to realize efficient mixing processes. In this work, an optimization framework integrating the Kolmogorov–Arnold network (KAN) surrogate model and the non-dominated sorting genetic algorithm (NSGA-II) is developed for the geometric design of unbaffled stirred-tank impellers. Three-dimensional computational fluid dynamics (CFD) simulations were conducted over broad parametric ranges of impeller blade length, width, number, and tilt angle to produce datasets of the flow fields. These datasets were subsequently employed to train the KAN surrogate model, enabling rapid and accurate prediction of the three-dimensional flow fields. The root-mean-square (RMS) of static pressure and mixing intensity (MI) were calculated from the surrogate-predicted data and served as dual objective functions for NSGA-II optimization. The optimal impeller geometry identified by the KAN–NSGA-II framework was further validated, revealing a significant reduction in RMS pressure and an enhancement in MI relative to the baseline design. The result shows that combining data-driven surrogate modeling with evolutionary optimization provides a robust and efficient strategy for the performance-driven geometric optimization of industrial mixing equipment.
搅拌槽广泛应用于各个行业,以实现高效的混合过程。在这项工作中,结合Kolmogorov-Arnold网络(KAN)代理模型和非支配排序遗传算法(NSGA-II)开发了一个优化框架,用于无挡板搅拌槽叶轮的几何设计。在较宽的叶轮叶片长度、宽度、叶片数和叶片倾角等参数范围内进行了三维计算流体力学(CFD)仿真,得到了流场数据集。随后利用这些数据集训练KAN代理模型,实现了对三维流场的快速准确预测。根据替代预测数据计算静压均方根(RMS)和混合强度(MI),并作为NSGA-II优化的双目标函数。KAN-NSGA-II框架确定的最佳叶轮几何形状得到了进一步验证,结果显示相对于基线设计,RMS压力显著降低,MI增强。结果表明,将数据驱动的代理建模与进化优化相结合,为性能驱动的工业混合设备几何优化提供了一种鲁棒高效的策略。
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引用次数: 0
Generative learning for slow manifolds and bifurcation diagrams 慢流形和分岔图的生成学习
IF 3.9 2区 工程技术 Q2 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2026-04-01 Epub Date: 2025-12-30 DOI: 10.1016/j.compchemeng.2025.109544
Ellis R. Crabtree , Dimitris G. Giovanis , Nikolaos Evangelou , Juan M. Bello-Rivas , Ioannis G. Kevrekidis
In dynamical systems characterized by separation of time scales, the approximation of so called “slow manifolds”, on which the long term dynamics lie, is a useful step for model reduction. Initializing on such slow manifolds is a useful step in modeling, since it circumvents fast transients, and is crucial in multiscale algorithms (like the equation-free approach) alternating between fine scale (fast) and coarser scale (slow) simulations. In a similar spirit, when one studies the infinite time dynamics of systems depending on parameters, the system attractors (e.g., its steady states) lie on bifurcation diagrams (curves for one-parameter continuation, and more generally, on manifolds in state × parameter space. Sampling these manifolds gives us representative attractors (here, steady states of ODEs or PDEs) at different parameter values. Algorithms for the systematic construction of these manifolds (slow manifolds, bifurcation diagrams) are required parts of the “traditional” numerical nonlinear dynamics toolkit.
In more recent years, as the field of Machine Learning develops, conditional score-based generative models (cSGMs) have been demonstrated to exhibit remarkable capabilities in generating plausible data from target distributions that are conditioned on some given label. It is tempting to exploit such generative models to produce samples of data distributions (points on a slow manifold, steady states on a bifurcation surface) conditioned on (consistent with) some quantity of interest (QoI, observable). In this work, we present a framework for using cSGMs to quickly (a) initialize on a low-dimensional (reduced-order) slow manifold of a multi-time-scale system consistent with desired value(s) of a QoI (a “label”) on the manifold, and (b) approximate steady states in a bifurcation diagram consistent with a (new, out-of-sample) parameter value. This conditional sampling can help uncover the geometry of the reduced slow-manifold and/or approximately “fill in” missing segments of steady states in a bifurcation diagram. The quantity of interest, which determines how the sampling is conditioned, is either known a priori or identified using manifold learning-based dimensionality reduction techniques applied to the training data.
在以时间尺度分离为特征的动力系统中,长期动力学所依赖的所谓“慢流形”的近似是模型简化的一个有用步骤。在这种慢流形上初始化是建模中的一个有用步骤,因为它绕过了快速瞬态,并且在多尺度算法(如无方程方法)中在精细尺度(快速)和粗尺度(慢)模拟之间交替是至关重要的。同样,当一个人研究依赖于参数的系统的无限时间动力学时,系统吸引子(例如,它的稳态)位于分岔图(单参数延拓的曲线)上,更一般地说,位于状态x参数空间中的流形上。对这些流形进行采样,可以得到不同参数值下具有代表性的吸引子(这里是ode或pde的稳定状态)。这些流形(慢流形,分岔图)的系统构造算法是“传统”数值非线性动力学工具包的必要组成部分。近年来,随着机器学习领域的发展,基于条件分数的生成模型(cSGMs)已经被证明在从特定标签条件下的目标分布生成可信数据方面表现出非凡的能力。利用这种生成模型来产生数据分布的样本(慢流形上的点,分岔表面上的稳定状态)是很诱人的,这些数据分布的条件是(与)一些兴趣量(qi,可观察值)一致。在这项工作中,我们提出了一个使用cSGMs的框架,用于快速(a)初始化与流形上的qi(一个“标签”)的期望值一致的多时间尺度系统的低维(降阶)慢流形,以及(b)在与(新的,样本外)参数值一致的分岔图中近似稳态。这种条件采样可以帮助揭示减少的慢流形的几何形状和/或近似地“填补”分岔图中稳态的缺失部分。兴趣的数量决定了采样的条件,它要么是先验的,要么是使用应用于训练数据的基于学习的多种降维技术来识别的。
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引用次数: 0
Physics-informed graph transformer fusion for leakage detection and grading in water distribution networks 用于配水网络泄漏检测和分级的物理信息图变压器融合
IF 3.9 2区 工程技术 Q2 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2026-04-01 Epub Date: 2026-01-09 DOI: 10.1016/j.compchemeng.2026.109563
Xianming Lang , Yibing Wang , Jiangtao Cao , Qiang Liu , Edith C.H. Ngai
Urban water distribution networks face significant challenges from pipeline leakage, which leads to water loss and operational inefficiencies. Existing data-driven detection methods often neglect inherent hydraulic principles, resulting in poor model generalizability and a lack of quantitative leakage severity assessment. To address these issues, this paper proposes a physics-informed graph transformer fusion (PI-GTF) framework that integrates hydraulic mechanisms with deep learning for leakage detection and grading. The model embeds hydraulic governing equations and signal propagation rules into a graph convolutional network (GCN) and a transformer to capture spatial pipeline topology and long-term temporal dependencies of leakage signals. A novel physics-aware hierarchical adversarial gating attention (PHAGA) module is designed to align and fuse these heterogeneous features effectively. Furthermore, a five-level leakage grading system is established by combining hydraulic model outputs with sensor-based features such as pressure fluctuations and abnormal flow durations. The experimental results of a high-fidelity simulation model of Shenyang’s water network show that PI-GTF outperforms existing methods in terms of accuracy, precision, and F1 score, with zero cross-level misclassification. Migration tests on real residential networks demonstrate strong generalizability, with performance degradation within 2%. This study provides a reliable dual-driven framework for end-to-end leakage management and supports intelligent decision-making in water network maintenance.
城市配水管网面临着管道泄漏的重大挑战,管道泄漏导致水资源流失和运行效率低下。现有的数据驱动检测方法往往忽略了固有的水力原理,导致模型通用性差,缺乏定量的泄漏严重程度评估。为了解决这些问题,本文提出了一个物理知情图变压器融合(PI-GTF)框架,该框架将液压机制与深度学习集成在一起,用于泄漏检测和分级。该模型将水力控制方程和信号传播规则嵌入到图卷积网络(GCN)和变压器中,以捕获管道的空间拓扑结构和泄漏信号的长期时间依赖性。设计了一种新的物理感知分层对抗性门控注意(PHAGA)模块来有效地对齐和融合这些异构特征。将水力模型输出与基于传感器的压力波动、异常流量持续时间等特征相结合,建立了五级泄漏分级系统。沈阳市水网高保真仿真模型实验结果表明,PI-GTF在准确率、精密度和F1评分方面均优于现有方法,且无交叉水平误分类。在实际住宅网络上的迁移测试显示了很强的泛化性,性能下降在2%以内。该研究为端到端泄漏管理提供了可靠的双驱动框架,并支持水网维护的智能决策。
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引用次数: 0
A blockchain-based circular economy taxonomy model for secure & efficient toxic materials supply chain: A technology-based intervention and case study approach 基于区块链的安全高效有毒材料供应链循环经济分类模型:基于技术的干预和案例研究方法
IF 3.9 2区 工程技术 Q2 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2026-04-01 Epub Date: 2025-12-07 DOI: 10.1016/j.compchemeng.2025.109517
Muhammad Shoaib , Rongjian Yu , Hassan Ali , Amin Ullah Khan , Ahmad Fraz
Globalization makes the supply chain for toxic materials (TOM’s) complex and extensive, affecting their reliability and potentially causing disruptions across various operations. The toxic materials supply chain is a delicate industrial operation that requires significant attention. Integrating the circular economy and blockchain technology into the supply chain provides a substantial solution to this issue, as previous literature lacks a secure and efficient digital system. To achieve this, the state-of-the-art Technology-Based Intervention (TBI) was a cutting-edge methodology that often incorporated the latest technologies and tools, enabling more innovative research validation and efficient problem-solving. This study initially explored the hidden potential of blockchain and the detailed process of the circular supply chain, aiming to provide deep insights. Later, a blockchain-based circular-economy taxonomy model was proposed to enable a secure and efficient toxic-materials supply chain. This model comprises a blockchain design layout, with its key features implemented in the toxic materials circular supply chain (CSC) processes, aiming to achieve a secure and efficient supply chain by addressing key performance indicators (KPIs). Moreover, this paper examines YongTaiyun (永泰运) Chemical Logistics Co., Ltd. as a real-world case study to explore how conventional chemical logistics companies are transforming and upgrading in the digital era by integrating blockchain technology. This approach enables rigorous analysis of complex real-world phenomena, particularly the nexus of technology and industry practices. The results illustrate that blockchain mitigates toxic materials supply chain risks through digital automation and promotes zero waste by reusing, recycling, reprocessing, and remanufacturing used products. It enables governance agencies, traffic controllers, and transportation management to develop standards and policies to eliminate risks related to toxic chemicals, especially nuclear reactors, radiation leakage, irregularities, and illegal access, while providing secure and efficient documentation, handling, storage, and transportation systems. This research provides a comprehensive understanding and roadmap for academic scholars and researchers, aiming to help industrial practitioners, policymakers, and authorised agencies implement blockchain technology and develop informed rules on secure and efficient practices.
全球化使得有毒材料(TOM)的供应链变得复杂和广泛,影响了它们的可靠性,并可能导致各种操作的中断。有毒材料供应链是一个需要高度关注的微妙工业操作。将循环经济和区块链技术整合到供应链中为这一问题提供了实质性的解决方案,因为以前的文献缺乏安全高效的数字系统。为了实现这一目标,最先进的基于技术的干预(TBI)是一种前沿的方法,经常结合最新的技术和工具,使更多的创新研究验证和有效的解决问题。本研究初步探索了区块链的潜在潜力和循环供应链的详细流程,旨在提供深入的见解。随后,提出了基于区块链的循环经济分类模型,以实现安全高效的有毒材料供应链。该模型包括区块链设计布局,其关键功能在有毒材料循环供应链(CSC)流程中实现,旨在通过解决关键绩效指标(kpi)实现安全高效的供应链。此外,本文还以永泰运化工物流有限公司为案例,探讨传统化工物流企业如何在数字化时代通过整合区块链技术进行转型升级。这种方法能够对复杂的现实世界现象进行严格的分析,特别是技术和工业实践的联系。结果表明,区块链通过数字化自动化减轻了有毒材料供应链风险,并通过再利用、回收、再加工和再制造废旧产品来促进零浪费。它使治理机构、交通管制员和运输管理人员能够制定标准和政策,以消除与有毒化学品有关的风险,特别是与核反应堆、辐射泄漏、违规和非法访问有关的风险,同时提供安全有效的文档、处理、存储和运输系统。本研究为学术学者和研究人员提供了一个全面的理解和路线图,旨在帮助工业从业者、政策制定者和授权机构实施区块链技术,并制定有关安全和有效实践的知情规则。
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引用次数: 0
Advanced control of continuous pharmaceutical manufacturing processes: A case study on the application of artificial neural network for predictive control of a CDC line 连续制药过程的先进控制:人工神经网络在CDC生产线预测控制中的应用案例研究
IF 3.9 2区 工程技术 Q2 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2026-04-01 Epub Date: 2026-01-09 DOI: 10.1016/j.compchemeng.2026.109560
Jianan Zhao, Geng Tian, Wei Yang, Das Jayanti, Abdollah Koolivand, Xiaoming Xu
The adoption of continuous pharmaceutical manufacturing has driven increased use of modeling, simulation, and advanced process control strategies. Artificial intelligence (AI) model-based approaches, like neural network predictive control (NNPC), offer advantages in providing insights, predictions, and process adjustments. However, evaluating the credibility of such models and accurately quantifying their impact on product quality remains challenging. In this study, a digital twin model of a continuous direct compression (CDC) line was developed based on residence time distribution theory. A two-layer neural network model was trained using data from the digital twin to predict system outputs. The NNPC model combined the trained neural network with an optimization block to adjust control signals and minimize tracking error and control effort. A proportional-integral-derivative (PID) controller was also developed for comparison. The developed neural network model accurately represented the dynamics of the nonlinear system. The tuned NNPC outperformed PID in setpoint tracking (zero overshoot, shorter settling times) and disturbance rejection (≤1.6% peak deviation, settling time of zero) for ±20% and ±50% changes. In conclusion, the NNPC model demonstrated remarkable performance in setpoint tracking and disturbance rejection for the simulated CDC line, underscoring the potential of AI-based control strategies in enhancing product quality and regulatory assessment.
连续制药生产的采用推动了建模、仿真和高级过程控制策略的使用增加。基于人工智能(AI)模型的方法,如神经网络预测控制(NNPC),在提供见解、预测和过程调整方面具有优势。然而,评估这些模型的可信度并准确量化它们对产品质量的影响仍然具有挑战性。本文基于停留时间分布理论,建立了连续直接压缩线的数字孪生模型。利用数字孪生的数据训练了一个双层神经网络模型来预测系统输出。NNPC模型将训练好的神经网络与优化块相结合,调整控制信号,使跟踪误差和控制努力最小化。为了进行比较,还开发了一种比例-积分-导数(PID)控制器。所建立的神经网络模型准确地反映了非线性系统的动力学特性。调整后的NNPC在±20%和±50%的变化情况下,在设定值跟踪(零超调,更短的沉降时间)和干扰抑制(峰值偏差≤1.6%,沉降时间为零)方面优于PID。总之,NNPC模型在模拟的CDC线的设定值跟踪和干扰抑制方面表现出色,强调了基于人工智能的控制策略在提高产品质量和监管评估方面的潜力。
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引用次数: 0
Research on natural gas pipeline corrosion prediction by integrating extreme gradient boosting and generative adversarial network 结合极端梯度增强和生成对抗网络的天然气管道腐蚀预测研究
IF 3.9 2区 工程技术 Q2 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Pub Date : 2026-04-01 Epub Date: 2025-12-30 DOI: 10.1016/j.compchemeng.2025.109547
Guoxi He , Jing Tian , Dezhi Tang , Fei Zhao , Shuhua Li , Chao Li , Kexi Liao , XiaoFei Chen , Wen Yang
Accurate prediction of corrosion rates is of great significance for ensuring pipeline integrity and operational safety. This study proposes a novel hybrid prediction model—GAN-QPSO-XGBoost—which integrates a Generative Adversarial Network (GAN), Quantum-behaved Particle Swarm Optimization (QPSO), and the XGBoost algorithm. This study used GAN to augment 100 field data sets with 50 high-quality synthetic samples, forming an enhanced dataset of 150. The Kolmogorov-Smirnov test showed p greater than 0.05 and MAPE around 5%, confirming the synthetic data’s statistical consistency and numerical reliability. QPSO, by introducing quantum behavior mechanisms, effectively overcomes the issues of local optima and premature convergence commonly found in traditional optimization algorithms, further optimizing the predictive performance of XGBoost.To comprehensively evaluate model performance, this study adopts multiple standard metrics for validation and introduces the SHAP (Shapley Additive exPlanations) method to enhance model interpretability. Experimental results demonstrate that the GAN-QPSO-XGBoost hybrid model significantly outperforms existing benchmark models in corrosion rate prediction, with the following evaluation metrics: R² = 0.922, MAPE = 1.24%, MAE = 0.036, MSE = 0.0018, and RMSE = 0.042, fully proving its excellent predictive accuracy and stability. SHAP analysis further reveals that temperature, liquid holdup, flow velocity, CO2 partial pressure, gas-wall shear stress, and liquid-wall shear stress are the most significant factors influencing corrosion rate.In conclusion, the GAN-QPSO-XGBoost hybrid model not only significantly improves the accuracy and reliability of corrosion rate prediction but also provides a scientific basis and operational guidance for pipeline maintenance, safety assessment, and protection strategy formulation in practical engineering.
准确预测管道腐蚀速率对保证管道的完整性和运行安全具有重要意义。本研究提出了一种新的混合预测模型GAN-QPSO-XGBoost,该模型集成了生成对抗网络(GAN)、量子粒子群优化(QPSO)和XGBoost算法。本研究使用GAN用50个高质量的合成样本增强了100个现场数据集,形成了150个增强数据集。Kolmogorov-Smirnov检验显示p > 0.05, MAPE在5%左右,证实了合成数据的统计一致性和数值可靠性。QPSO通过引入量子行为机制,有效克服了传统优化算法存在的局部最优和过早收敛问题,进一步优化了XGBoost的预测性能。为了综合评价模型的性能,本研究采用多个标准指标进行验证,并引入SHAP (Shapley Additive exPlanations)方法来增强模型的可解释性。实验结果表明,GAN-QPSO-XGBoost混合模型在腐蚀速率预测方面明显优于现有的基准模型,其评价指标为:R²= 0.922,MAPE = 1.24%, MAE = 0.036, MSE = 0.0018, RMSE = 0.042,充分证明了其良好的预测精度和稳定性。进一步的SHAP分析表明,温度、液含率、流速、CO2分压、气壁剪切应力和液壁剪切应力是影响腐蚀速率最显著的因素。综上所述,GAN-QPSO-XGBoost混合模型不仅显著提高了腐蚀速率预测的准确性和可靠性,而且为实际工程中的管道维护、安全评估和保护策略制定提供了科学依据和操作指导。
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