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Prediction model of the gas utilization rate in a blast furnace considering smelting intensity classification 考虑冶炼强度分级的高炉煤气利用率预测模型
IF 4.6 2区 计算机科学 Q1 AUTOMATION & CONTROL SYSTEMS Pub Date : 2026-05-01 Epub Date: 2026-02-02 DOI: 10.1016/j.conengprac.2026.106816
Yunpeng Guo , Qifu Chen , Jianqi An , Zhuang Li , Jinhua She
As the smelting intensity (SI) affects both the chemical reactions and physical changes inside blast furnaces (BF), the relationship between the gas utilization rate (GUR) and blast supply parameters varies according to different levels of SI. This paper introduces a GUR prediction model that considers SI classification information. First, the impact of SI on the state parameters of a BF is evaluated from the perspective of the molten iron smelting mechanism. Then, a fuzzy C-means clustering method (FCM) is presented to classify SI based on state parameters. Subsequently, an SI-aware GUR prediction model is constructed using principal component analysis (PCA) and an extreme learning machine (ELM) to predict GUR development trends. Finally, the model is used to predict real-world GUR data under different SI levels. Analysis of real-world production data shows that the proposed method accurately predicts GUR and outperforms methods that do not account for SI classification.
由于冶炼强度既影响高炉内部的化学反应,也影响高炉内部的物理变化,因此不同冶炼强度的高炉煤气利用率与送风参数之间的关系也不同。本文介绍了一种考虑SI分类信息的GUR预测模型。首先,从铁水熔炼机理的角度评价SI对高炉状态参数的影响。然后,提出了一种基于状态参数的模糊c均值聚类方法(FCM)。随后,利用主成分分析(PCA)和极限学习机(ELM)构建了si感知的GUR预测模型,预测了GUR的发展趋势。最后,利用该模型对不同SI水平下的真实GUR数据进行预测。对实际生产数据的分析表明,所提出的方法准确地预测了GUR,并且优于不考虑SI分类的方法。
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引用次数: 0
Robust control of aerial cable-suspended payload transportation via fully actuated system approach 基于全驱动系统方法的空中悬索载荷运输鲁棒控制
IF 4.6 2区 计算机科学 Q1 AUTOMATION & CONTROL SYSTEMS Pub Date : 2026-05-01 Epub Date: 2026-02-10 DOI: 10.1016/j.conengprac.2026.106837
Junjie Kang, Jinjun Shan
Unmanned aerial vehicles with cable-suspended payloads suffer from underactuation, strong coupling, and disturbances. These factors often cause payload swing and degrade tracking performance. This paper proposes a robust control method based on the fully actuated system (FAS) framework. The system dynamics are reformulated into a reduced-order FAS form with virtual constraints. The remaining states are arranged into a cascade structure for ensuring stability. On this basis, FAS controllers are designed for both outer-loop dynamics (UAV position and payload swing) and inner-loop attitude dynamics. Disturbance observers are introduced to handle external disturbances. Stability is proved through cascade analysis. Simulations and experiments confirm that the proposed controllers achieve robust waypoint tracking with improved swing suppression.
悬索式无人机存在驱动不足、强耦合和干扰等问题。这些因素通常会导致有效载荷波动并降低跟踪性能。提出了一种基于全驱动系统(FAS)框架的鲁棒控制方法。将系统动力学重新表述为带虚拟约束的降阶FAS形式。其余状态排列成级联结构以保证稳定性。在此基础上,针对外环动力学(UAV位置和载荷摆动)和内环姿态动力学设计了FAS控制器。引入扰动观测器来处理外部扰动。通过级联分析证明了其稳定性。仿真和实验验证了该控制器在改进摆动抑制的基础上实现了鲁棒的路点跟踪。
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引用次数: 0
Multi agent deep reinforcement learning for supervising local controllers in energy-intensive industrial processes 基于多智能体深度强化学习的能源密集型工业过程局部控制器监控
IF 4.6 2区 计算机科学 Q1 AUTOMATION & CONTROL SYSTEMS Pub Date : 2026-05-01 Epub Date: 2026-02-05 DOI: 10.1016/j.conengprac.2026.106794
Karim Nadim , Ahmed Ragab , Hakim Ghezzaz
Industrial plants are equipped with several local controllers with a high degree of interaction. Controllers in complex systems tend to operate in a competitive way to achieve their own objective, which can negatively impact other controllers and consequently the global KPI. In addition, the rapid changes in process dynamics, the variations, and fluctuations in the process conditions and production targets introduce major challenges in optimizing the whole process. As a result, operators struggle to adjust the controllers’ setpoints to optimize the process operation. Therefore, there is a clear need for an approach that captures the controllers’ interdependence and optimizes the setpoints in real-time to ensure energy-efficient operations. This paper proposes an intelligent decentralized supervisory control approach based on multi-agent deep reinforcement learning (MADRL) to recommend the optimal combinations of controllers’ setpoints that maintain desired process operation. Multiple agents are developed based on the deep deterministic policy gradient algorithm to collaborate and control different interconnected subsystems. The agents are trained via interacting with a process simulation, where each agent performs actions (setpoint changes) and observes certain rewards (global KPI to be maximized) and states (measured variables) from the simulation. The approach is validated on a case study based on a heat recovery network of a thermomechanical pulp mill comprising four different subsystems. The proposed decentralized approach was compared to two centralized approaches: a baseline control set by the process expert and a single DDPG agent. The multi-agent approach was able to reduce the steam flow consumption by 6.7 % compared to the experts’ baseline and 5.3% compared to the single agent with faster convergence. Two possible strategies were proposed to implement this approach in the industry, depending on the criticality of the process and the degree of fidelity of its process simulation.
工业工厂配备了几个具有高度相互作用的本地控制器。复杂系统中的控制器倾向于以竞争的方式操作以实现自己的目标,这可能对其他控制器产生负面影响,从而影响全局KPI。此外,过程动力学的快速变化、过程条件和生产目标的变化和波动,为优化整个过程带来了重大挑战。因此,操作人员很难调整控制器的设定值来优化过程操作。因此,显然需要一种方法来捕获控制器的相互依赖性,并实时优化设定值,以确保节能运行。本文提出了一种基于多智能体深度强化学习(MADRL)的智能分散监督控制方法,以推荐控制器设定值的最优组合,以保持期望的过程运行。基于深度确定性策略梯度算法,开发了多个智能体,对不同的互联子系统进行协作和控制。通过与流程模拟交互来训练代理,其中每个代理执行操作(设定值更改)并观察来自模拟的某些奖励(要最大化的全局KPI)和状态(测量变量)。该方法在一个由四个不同子系统组成的热力纸浆厂热回收网络的案例研究中得到了验证。将提出的分散方法与两种集中方法进行了比较:由过程专家设置的基线控制和单个DDPG代理。与专家基线相比,多代理方法能够减少6.7%的蒸汽流量消耗,与收敛速度更快的单代理相比,减少5.3%的蒸汽流量消耗。根据过程的关键程度和过程模拟的保真度,提出了两种可能的策略来实现该方法。
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引用次数: 0
Comparative study of fault-tolerant control strategies for complete steer-by-wire failures 线控完全故障容错控制策略的比较研究
IF 4.6 2区 计算机科学 Q1 AUTOMATION & CONTROL SYSTEMS Pub Date : 2026-05-01 Epub Date: 2026-01-31 DOI: 10.1016/j.conengprac.2026.106812
Yunchul Ha , Seunguk Jeon , Aldo Sorniotti , Seunghoon Woo
This paper quantitatively compares and evaluates fault-tolerant control strategies to ensure vehicle-level safety under complete steer-by-wire (SbW) fault conditions. Previous studies were often limited to specific failure types or lacked systematic strategy comparisons, making it difficult to clearly identify their applicability and limitations. In this study, a unified fault-tolerant control framework addressing two types of complete SbW failures-fixed steering angle (FSA) and loss of steering torque (LST)–was developed. Within this framework, various strategies including rear-wheel steering (RWS), torque vectoring (TV), and their combinations were implemented, and performance was analyzed using standard evaluation scenarios: slow-ramp, sine-sweep, step, and 1-period sine steer. Simulation results indicate that under FSA failure, RWS-based strategies are relatively effective, with all strategies achieving near-nominal vehicle performance at high speeds. In contrast, LST failure leads to significant performance degradation due to unintended front-wheel steering, making nominal-level cornering unattainable. RWS-only control exhibits severe limitations, while partial compensation is achieved when combined with TV, demonstrating the benefit of multi-actuator coordination under fault conditions. These findings were further validated through real-vehicle tests, confirming the practical applicability of the proposed SbW fault-tolerant controller. By systematically comparing multiple strategies across both FSA and LST failure types under complete SbW conditions, the study provides fundamental insights for designing fault-tolerant controllers that account for failure-specific characteristics, establishing a foundation for future real-vehicle implementation and application research.
本文定量比较和评价了在完全线控(SbW)故障条件下保证车辆安全的容错控制策略。以往的研究往往局限于特定的失效类型或缺乏系统的策略比较,难以明确其适用性和局限性。在这项研究中,开发了一个统一的容错控制框架,用于解决两种类型的SbW完全故障-固定转向角(FSA)和转向扭矩损失(LST)。在此框架下,采用了后轮转向(RWS)、扭矩矢量控制(TV)及其组合等多种策略,并使用慢速斜坡、正弦扫描、阶跃转向和1周期正弦转向等标准评估场景对性能进行了分析。仿真结果表明,在FSA失效的情况下,基于rws的策略是相对有效的,所有策略在高速下都达到了接近标称的车辆性能。相比之下,LST故障会导致前轮意外转向导致性能显著下降,无法实现名义水平的转弯。RWS-only控制显示出严重的局限性,而与TV结合时实现部分补偿,证明了故障条件下多执行器协调的好处。通过实车试验进一步验证了这些研究结果,验证了所提出的SbW容错控制器的实际适用性。通过系统地比较完全SbW条件下FSA和LST故障类型的多种策略,该研究为设计考虑故障特定特征的容错控制器提供了基本见解,为未来的实车实现和应用研究奠定了基础。
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引用次数: 0
Dual-stage recognition framework for open-set fault diagnosis in rotating machinery considering varying inter-class similarity 考虑类间相似度变化的旋转机械开集故障诊断双阶段识别框架
IF 4.6 2区 计算机科学 Q1 AUTOMATION & CONTROL SYSTEMS Pub Date : 2026-05-01 Epub Date: 2026-01-30 DOI: 10.1016/j.conengprac.2026.106808
Penglong Lian , Penghui Shang , Jianxiao Zou , Shicai Fan
Open-set fault diagnosis in rotating machinery is critically hindered by substantial inter-class similarity between unknown and known fault classes, leading to unreliable recognition. Although significant advances have been made using various adaptation and classification techniques, current open-set methods still struggle to resolve fine-grained distinctions and class ambiguities in open-set environments, often resulting in misclassifications and higher maintenance costs. To address these challenges, we propose an adaptive dual-stage framework that integrates a novel tri-branch network and dynamic contrastive learning (Ds-TBN). Specifically, the tri-branch network integrates a base feature branch, a similarity-sensitive branch, and a global feature enhancement branch to collaboratively extract complementary and discriminative representations. Dynamic contrastive learning is then applied to enforce intra-class compactness and explicitly enhance inter-class separability, significantly improving feature discriminability. Building on these enhanced representations, the dual-stage recognition framework first utilizes an adaptive Weibull distribution to detect boundary outliers for accurate identification of unknown fault classes. Subsequently, the second stage further refines classification probabilities using a meta-recognition module, adaptively resolving ambiguities between highly similar known and unknown faults. Extensive experiments across diverse similarity-based open-set diagnostic tasks on the CWRU, Gearbox, and our self-developed Drivetrain Prognostics Simulator (DPS) test bench show that the proposed method Ds-TBN achieves average H-scores of 96.65%, 90.43%, and 93.58%, respectively. These results significantly surpass existing approaches and highlight the framework’s robustness and practical applicability for real-world industrial fault diagnosis.
旋转机械的开集故障诊断受到未知和已知故障类间大量相似性的严重阻碍,导致识别不可靠。尽管使用各种适应和分类技术取得了重大进展,但目前的开放集方法仍然难以解决开放集环境中的细粒度差异和类歧义,这往往导致错误分类和更高的维护成本。为了应对这些挑战,我们提出了一种自适应双阶段框架,该框架集成了一种新的三分支网络和动态对比学习(Ds-TBN)。具体来说,三分支网络集成了一个基本特征分支、一个相似敏感分支和一个全局特征增强分支,以协同提取互补和区分表示。然后应用动态对比学习来增强类内紧密性和显式增强类间可分离性,显著提高特征可判别性。在这些增强表征的基础上,双阶段识别框架首先利用自适应威布尔分布来检测边界异常值,以准确识别未知故障类别。随后,第二阶段使用元识别模块进一步细化分类概率,自适应地解决高度相似的已知和未知故障之间的歧义。在CWRU、Gearbox和我们自主开发的动力传动系统预测模拟器(DPS)测试台上进行的各种基于相似性的开放集诊断任务的大量实验表明,所提出的方法Ds-TBN的平均h分数分别为96.65%、90.43%和93.58%。这些结果大大超越了现有的方法,突出了该框架在实际工业故障诊断中的鲁棒性和实用性。
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引用次数: 0
Dual-coil active disturbance rejection control for compact MEG measurement systems 紧凑型MEG测量系统的双线圈自抗扰控制
IF 4.6 2区 计算机科学 Q1 AUTOMATION & CONTROL SYSTEMS Pub Date : 2026-05-01 Epub Date: 2026-02-13 DOI: 10.1016/j.conengprac.2026.106833
Haoan Wang , Ying Meng , Jinji Sun , Lu Zhang , Haifeng Zhang , Shiqiang Zheng
To address the dual challenges of low-frequency spatial magnetic field fluctuations and mid-frequency noise in compact magnetically shielded rooms (MSRs) for optically pumped magnetometer-based magnetoencephalography (MEG), a dual-coil cooperative control method is proposed. The method integrates external compensation (EC) coils and internal compensation (IC) coils to establish a joint compensation mechanism in frequency and space within the target region. Each coil employs a modular error-based linear active disturbance rejection controller (e-LADRC) to simplify engineering applications. Specifically, the EC subsystem reduces low-frequency magnetic fluctuations in the target region by 95.0% through anti-phase spatial compensation of non-uniform disturbance fields. Concurrently, the IC subsystem actively suppresses mid-frequency noise via feedback control, decreasing the average power spectral density (PSD) in the 1–40 Hz by 4.22 dB. This work provides an engineering-oriented solution for compact, high-precision magnetic measurement systems, with potential applications in fields requiring low-noise magnetic sensing.
针对紧凑磁屏蔽室(MSRs)中低频空间磁场波动和中频噪声的双重挑战,提出了一种双线圈协同控制方法。该方法集成外部补偿(EC)线圈和内部补偿(IC)线圈,在目标区域内建立频率和空间的联合补偿机制。每个线圈采用模块化基于误差的线性自抗扰控制器(e-LADRC),以简化工程应用。具体来说,EC子系统通过对非均匀扰动场的反相位空间补偿,将目标区域的低频磁波动降低了95.0%。同时,集成电路子系统通过反馈控制主动抑制中频噪声,使1-40 Hz的平均功率谱密度(PSD)降低4.22 dB。这项工作为紧凑、高精度的磁测量系统提供了一种面向工程的解决方案,在需要低噪声磁传感的领域具有潜在的应用前景。
{"title":"Dual-coil active disturbance rejection control for compact MEG measurement systems","authors":"Haoan Wang ,&nbsp;Ying Meng ,&nbsp;Jinji Sun ,&nbsp;Lu Zhang ,&nbsp;Haifeng Zhang ,&nbsp;Shiqiang Zheng","doi":"10.1016/j.conengprac.2026.106833","DOIUrl":"10.1016/j.conengprac.2026.106833","url":null,"abstract":"<div><div>To address the dual challenges of low-frequency spatial magnetic field fluctuations and mid-frequency noise in compact magnetically shielded rooms (MSRs) for optically pumped magnetometer-based magnetoencephalography (MEG), a dual-coil cooperative control method is proposed. The method integrates external compensation (EC) coils and internal compensation (IC) coils to establish a joint compensation mechanism in frequency and space within the target region. Each coil employs a modular error-based linear active disturbance rejection controller (e-LADRC) to simplify engineering applications. Specifically, the EC subsystem reduces low-frequency magnetic fluctuations in the target region by 95.0% through anti-phase spatial compensation of non-uniform disturbance fields. Concurrently, the IC subsystem actively suppresses mid-frequency noise via feedback control, decreasing the average power spectral density (PSD) in the 1–40 Hz by 4.22 dB. This work provides an engineering-oriented solution for compact, high-precision magnetic measurement systems, with potential applications in fields requiring low-noise magnetic sensing.</div></div>","PeriodicalId":50615,"journal":{"name":"Control Engineering Practice","volume":"170 ","pages":"Article 106833"},"PeriodicalIF":4.6,"publicationDate":"2026-05-01","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":null,"resultStr":null,"platform":"Semanticscholar","paperid":"146191393","PeriodicalName":null,"FirstCategoryId":null,"ListUrlMain":null,"RegionNum":2,"RegionCategory":"计算机科学","ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":"","EPubDate":null,"PubModel":null,"JCR":null,"JCRName":null,"Score":null,"Total":0}
引用次数: 0
Electrically actuated control system for the stabilization of synchrotron X-ray beams 同步加速器x射线光束稳定的电动控制系统
IF 4.6 2区 计算机科学 Q1 AUTOMATION & CONTROL SYSTEMS Pub Date : 2026-05-01 Epub Date: 2026-01-31 DOI: 10.1016/j.conengprac.2026.106805
Niccolò La Rosa , Samuele Moscato , Luigi Fortuna , Maide Bucolo , Massimo Camarda
Maintaining sub-micrometer stability of synchrotron X-ray beams is essential for the accuracy and repeatability of cutting-edge scientific and medical experiments. Traditional beamline stabilization systems, based on mechanical actuation of optical elements, are inherently limited in speed due to physical constraints like friction and inertia. This study introduces an innovative control strategy based on electrical actuation, directly influencing the bending magnet responsible for steering the beam into the beamline. This approach unlocks the potential for significantly higher control frequencies, comparable to those used for the electron beam stabilization. A laboratory-scale replica was developed to validate the feasibility and robustness of this method. A Proportional-Integral (PI) controller has been implemented to stabilize the electron beam and compensate for disturbances. Experimental results demonstrate that this strategy enables precise, high-frequency beam stabilization, even in the presence of typical disturbances such as position drift occurring during X-Ray Absorption Spectroscopy (XAS) experiments. This work lays the groundwork for next-generation control systems in synchrotron facilities, aiming to enhance performance and open the door to more advanced experimental capabilities.
保持同步加速器x射线光束的亚微米稳定性对于尖端科学和医学实验的准确性和可重复性至关重要。传统的光束稳定系统基于光学元件的机械驱动,由于摩擦和惯性等物理约束,其速度本身就受到限制。本研究介绍了一种基于电驱动的创新控制策略,直接影响负责将光束转向光束线的弯曲磁铁。这种方法开启了显著提高控制频率的潜力,可与用于电子束稳定的频率相媲美。为了验证该方法的可行性和鲁棒性,开发了实验室规模的副本。采用比例积分(PI)控制器来稳定电子束并补偿干扰。实验结果表明,即使在x射线吸收光谱(XAS)实验中出现典型的干扰(如位置漂移),该策略也能实现精确的高频光束稳定。这项工作为同步加速器设施中的下一代控制系统奠定了基础,旨在提高性能并为更先进的实验能力打开大门。
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引用次数: 0
Parallel Petri nets with reinforcement learning for intelligent decision-making of digital twins in cyber physical systems 基于强化学习的并行Petri网用于网络物理系统中数字孪生的智能决策
IF 4.6 2区 计算机科学 Q1 AUTOMATION & CONTROL SYSTEMS Pub Date : 2026-05-01 Epub Date: 2026-02-10 DOI: 10.1016/j.conengprac.2026.106823
Jiliang Luo , Zexuan Lin , Sijia Yi , Zhaoyu Ye , Fei-Yue Wang
In order to bridge the gap between the virtual and real worlds, this paper presents a novel model known as the parallel Petri net, specifically designed for the digital twin modeling and real-time coordination of cyber physical systems, where each operation is assumed to require a constant processing time. Unlike traditional Petri nets, the parallel Petri net incorporates new elements, such as actor and promoter functions in association with traditional places. In this framework, actors may function as either discrete-event or continuous-state controllers. The transition firing rules are defined to create an execution algorithm to drive the cyber physical system being modeled and co-run the corresponding parallel Petri net in parallel as a cyber model of the physical system, thereby applying its semantic control specifications, including manufacturing process sequences and recipes, to real-world actions. Due to its extensive modeling capabilities, the parallel Petri net offers a wide range of transition firing options in most states of practical operations. This enables simultaneous addressing of scheduling and control challenges to enhance the efficiency of physical systems. To this end, a reinforcement learning approach is developed based on the simulations of parallel Petri nets. It is demonstrated that the state-action value function can reliably predict the minimum time required to reach a goal state following a transition. Additionally, a deep Q-learning algorithm is presented, where the parallel Petri net serves as the operational environment, to train a neural network model for real-time scheduling. As a result, the parallel Petri net is capable of making intelligent decisions for cyber-physical systems through the neural network. Finally, the implementation framework for parallel Petri nets has been detailed, and experiments conducted in a manufacturing plant have verified the validity of the proposed techniques.
为了弥合虚拟世界和现实世界之间的差距,本文提出了一种称为并行Petri网的新模型,专门为数字孪生建模和网络物理系统的实时协调而设计,其中每个操作都假定需要恒定的处理时间。与传统的Petri网不同,并行Petri网包含了新的元素,例如与传统场所相关的行动者和促进者函数。在这个框架中,参与者可以作为离散事件控制器或连续状态控制器。定义转换触发规则是为了创建一个执行算法来驱动正在建模的网络物理系统,并作为物理系统的网络模型并行地协同运行相应的并行Petri网,从而将其语义控制规范(包括制造过程序列和配方)应用于现实世界的操作。由于其广泛的建模能力,并行Petri网在大多数实际操作状态下提供了广泛的过渡发射选择。这可以同时解决调度和控制挑战,以提高物理系统的效率。为此,基于并行Petri网的仿真,开发了一种强化学习方法。结果表明,状态-动作值函数可以可靠地预测过渡后达到目标状态所需的最小时间。此外,提出了一种深度q -学习算法,以并行Petri网作为运行环境,训练用于实时调度的神经网络模型。因此,并行Petri网能够通过神经网络对网络物理系统进行智能决策。最后,详细介绍了并行Petri网的实现框架,并在制造工厂进行了实验,验证了所提出技术的有效性。
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引用次数: 0
Convex optimization-based parallel trajectory stitching in dynamic environments: A dual-layer trajectory planning framework 动态环境下基于凸优化的并行轨迹拼接:一种双层轨迹规划框架
IF 4.6 2区 计算机科学 Q1 AUTOMATION & CONTROL SYSTEMS Pub Date : 2026-05-01 Epub Date: 2026-02-09 DOI: 10.1016/j.conengprac.2026.106815
Bikang Hua , Zhaofeng Du , Tianhao Liu , Runqi Chai , Jiping Xu , Senchun Chai
This paper presents and validates an efficient dual-layer trajectory planning framework for the dynamic environment. The upper-layer utilizes offline global planning to generate an optimal global trajectory in a static obstacle environment, while the lower-layer performs online local planning, enabling real-time obstacle avoidance by predicting the future states of the dynamic obstacle and employing appropriate avoidance strategies. The main novelty lies in the following aspects: firstly, a fault-tolerant dynamic obstacle avoidance strategy, along with an LSTM-based trajectory prediction network, enables flexible velocity planning or local trajectory replanning based on the situation; secondly, a convex optimization-based parallel stitching strategy for local trajectory replanning, where candidate trajectories are generated through parallel computation and the optimal stitching solution is greedily selected. During the parallel problem-solving process, the original problem is transformed into a convex optimization problem via linearization and convexification to enhance solution efficiency. Iterative numerical solving is applied, with Line Search steps introduced between iterations to reduce deviation from original constraints and further minimize approximation errors. Simulation and experimental results validate the effectiveness and practicality of the proposed framework.
本文提出并验证了一种针对动态环境的有效的双层轨迹规划框架。上层利用离线全局规划在静态障碍环境中生成最优的全局轨迹,下层进行在线局部规划,通过预测动态障碍物的未来状态并采用适当的避障策略实现实时避障。主要新颖之处在于:首先,采用容错动态避障策略,结合基于lstm的轨迹预测网络,实现了基于情况的灵活速度规划或局部轨迹重规划;其次,采用基于凸优化的并行拼接策略进行局部轨迹重规划,通过并行计算生成候选轨迹,并贪婪选择最优拼接解;在并行求解过程中,通过线性化和凸化将原问题转化为凸优化问题,提高求解效率。采用迭代数值求解,在迭代之间引入直线搜索步骤,以减少与原始约束的偏差,进一步最小化近似误差。仿真和实验结果验证了该框架的有效性和实用性。
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引用次数: 0
Experimental validation of parallel model predictive control on multiple low-resource IoT devices 多低资源物联网设备并行模型预测控制的实验验证
IF 4.6 2区 计算机科学 Q1 AUTOMATION & CONTROL SYSTEMS Pub Date : 2026-05-01 Epub Date: 2026-02-02 DOI: 10.1016/j.conengprac.2026.106818
Shunta Yamamoto, Naoyuki Hara, Keiji Konishi, Yoshiki Sugitani
Wireless sensor networks (WSNs) are an important component of cyber-physical systems (CPS). They consist of low-resource, low-power nodes that perform local measurement and communication. While the CPS framework relies on complex computation and optimization over a network, this approach is not feasible in remote areas lacking stable network infrastructure. Under such situations, computation and optimization must be executed locally where the WSN nodes are installed. Using the IoT devices of the WSN nodes for performing computation and optimization is a possible approach, but the limited computational resources of these devices make it impossible to implement advanced control laws, such as Model Predictive Control (MPC). One solution for this is to decompose a single MPC problem into small subproblems, each of which is implemented on a low resource IoT device. In this paper, we focus on a parallel MPC method and derive an analytic form of unconstrained solutions of subproblems. With this derivation, we propose improved implementation algorithms of the parallel MPC for multiple low-resource IoT devices. Compared to existing time-splitting parallel MPC schemes, our parallel MPC scheme requires a smaller amount of data exchanged among subproblems, making it suitable for implementations using wireless communication capabilities of low-resource IoT devices. The proposed method is experimentally validated using multiple micro:bits with wireless communications.
无线传感器网络(WSNs)是网络物理系统(CPS)的重要组成部分。它们由执行本地测量和通信的低资源、低功耗节点组成。虽然CPS框架依赖于网络上复杂的计算和优化,但这种方法在缺乏稳定网络基础设施的偏远地区是不可行的。在这种情况下,必须在安装WSN节点的本地执行计算和优化。利用WSN节点的物联网设备进行计算和优化是一种可能的方法,但这些设备的有限计算资源使得无法实现先进的控制律,如模型预测控制(MPC)。对此的一个解决方案是将单个MPC问题分解为小的子问题,每个子问题都在低资源物联网设备上实现。本文研究了一种并行MPC方法,并导出了子问题无约束解的解析形式。通过此推导,我们提出了针对多个低资源物联网设备的并行MPC的改进实现算法。与现有的分时并行MPC方案相比,我们的并行MPC方案需要在子问题之间交换更少的数据,使其适合使用低资源物联网设备的无线通信功能实现。通过多微比特无线通信实验验证了该方法的有效性。
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引用次数: 0
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Control Engineering Practice
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