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Published:2026/1/8 10:24:12

最強ギャルのための、行列値パッシビティ指標講座💖

タイトル & 超要約:MIMOシステムのパッシビティを格上げ!行列で安定性UP✨

ギャル的キラキラポイント✨

● MIMO(多入力多出力)システムの"パッシビティ"を、行列(マトリックス)で表現するって斬新じゃん?😳 ● 行列値のおかげで、システムの安定性(壊れにくさ)がめっちゃ詳しく分析できるみたい💕 ● 電力とかロボットとか、色んな分野で役立つって、まさに"未来"って感じ💎✨

詳細解説

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Matrix-Valued Passivity Indices: Foundations, Properties, and Stability Implications

Xi Ru / Xiaoyu Peng / Xinghua Chen / Zhaojian Wang / Peng Yang / Feng Liu

The passivity index, a quantitative measure of a system's passivity deficiency or excess, has been widely used in stability analysis and control. Existing studies mostly rely on scalar forms of indices, which are restrictive for multi-input, multi-output (MIMO) systems. This paper extends the classical scalar indices to a systematic matrix-valued framework, referred to as passivity matrices. A broad range of classical results in passivity theory can be naturally generalized in this framework. We first show that, under the matrix representation, passivity indices essentially correspond to the curvature of the dissipativity functional under a second-variation interpretation. This result reveals that the intrinsic geometric structure of passivity consists of its directions and intensities, which a scalar index cannot fully capture. For linear time-invariant (LTI) systems, we examine the structural properties of passivity matrices with respect to the Loewner partial order and propose two principled criteria for selecting representative matrices. Compared with conventional scalar indices, the matrix-valued indices capture the passivity coupling among different input-output channels in MIMO systems and provide a more comprehensive description of system passivity. This richer information leads to lower passivation effort and less conservative stability assessment.

cs / eess.SY / cs.SY