基于鲁棒h∞控制和不确定自适应技术的主动悬架系统优化

IF 2.2 Q2 ENGINEERING, MULTIDISCIPLINARY
Kumlachew Yeneneh, Menelik Walle, Tatek Mamo, Yared Yalew
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引用次数: 0

摘要

本研究通过开发一种混合鲁棒自适应框架,提出了一种变革性的主动悬架控制方法,该框架协同结合了三种先进技术:μ合成增强H∞控制、模型参考自适应和实时频域优化。新架构克服了传统系统的基本限制,同时解决(i)参数不确定性,通过结构化鲁棒性裕度(μ <;1用于质量/刚度±25%的变化),(ii)通过自适应增益调度的非结构化道路干扰,以及(iii)使用50 ms频谱更新的闭环FFT分析的谐振振动。控制器的双自由度设计引入了突破性的解决方案,其中H∞核心保证稳定性,而自适应模块通过基于李雅普诺夫的参数估计动态调整阻尼比和刚度系数,实现比固定增益替代方案快40%的收敛速度。在iso标准化道路剖面下的综合模拟显示了前所未有的性能:与被动系统相比,悬架行程减少了87.1% (0.113 m至0.015 m),车身加速度减少了49.3% (6.38m/s²至3.73m/s²),同时能耗比传统H∞系统低18%。频域优化被证明是特别有效的,在关键的1-4 Hz舒适范围内,共振峰幅度降低了62 - 75%,在15 Hz轮跳频率下,共振峰幅度降低了55%。实际实现的优势包括与标准汽车传感器的兼容性(只需要加速度计和位移传感器),适度的计算负载(可在100 MHz汽车级处理器上执行),以及消除手动调整的自校准能力。这些进步使该框架成为下一代汽车的理想解决方案,并证明了其对电动平台(通过再生阻尼集成)和自动系统(通过支持V2X通信的预测适应)的适用性。该研究为车辆动力学的不确定性管理建立了新的理论基础,同时提供了在实际操作条件下验证的商业上可行的控制策略。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimizing active suspension systems with robust h∞ control and adaptive techniques under uncertainties
This study presents a transformative approach to active suspension control through the development of a hybrid robust-adaptive framework that synergistically combines three advanced techniques: μ-synthesis enhanced H∞ control, model reference adaptation, and real-time frequency-domain optimization. The novel architecture overcomes fundamental limitations in conventional systems by simultaneously addressing (i) parametric uncertainties through structured robustness margins (μ < 1 for ±25 % variations in mass/stiffness), (ii) unstructured road disturbances via adaptive gain scheduling, and (iii) resonant vibrations using closed-loop FFT analysis with 50 ms spectral updates. The controller's dual-degree-of-freedom design introduces a breakthrough solution where the H∞ core guarantees stability while the adaptive module dynamically adjusts damping ratios and stiffness coefficients through Lyapunov-based parameter estimation, achieving 40 % faster convergence than fixed-gain alternatives. Comprehensive simulations under ISO-standardized road profiles demonstrate unprecedented performance: 87.1 % reduction in suspension travel (0.113 m to 0.015 m) and 49.3 % decrease in body acceleration (6.38m/s² to 3.73m/s²) versus passive systems, while maintaining 18 % lower energy consumption than traditional H∞ implementations. The frequency-domain optimization proves particularly effective, reducing resonant peak magnitudes by 62–75 % in the critical 1–4 Hz comfort range and 55 % at the 15 Hz wheel-hop frequency. Practical implementation advantages include compatibility with standard automotive sensors (requiring only accelerometers and displacement sensors), modest computational load (executable on 100 MHz automotive-grade processors), and self-calibrating capability that eliminates manual tuning. These advancements position the framework as an ideal solution for next-generation vehicles, with demonstrated applicability to electric platforms (through regenerative damping integration) and autonomous systems (via V2X communication-enabled predictive adaptation). The research establishes new theoretical foundations for uncertainty management in vehicle dynamics while delivering a commercially viable control strategy validated under realistic operating conditions.
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来源期刊
Applications in engineering science
Applications in engineering science Mechanical Engineering
CiteScore
3.60
自引率
0.00%
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0
审稿时长
68 days
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