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detection algorithms » detection algorithm (Expand Search), genetic algorithms (Expand Search)
loading detection » loading direction (Expand Search), learning detection (Expand Search), enabling detection (Expand Search)
multiple loading » multiple long (Expand Search)
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Bioinspired Gradient-Modulus Iontronic Sensors with Drift-Suppressed Stability for Biomechanical Monitoring
Published 2025“…In biomechanical sensing, achieving flexible sensors with a broad detection range, ultrahigh sensitivity, and long-term stability remains a major challenge. …”
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Bioinspired Gradient-Modulus Iontronic Sensors with Drift-Suppressed Stability for Biomechanical Monitoring
Published 2025“…In biomechanical sensing, achieving flexible sensors with a broad detection range, ultrahigh sensitivity, and long-term stability remains a major challenge. …”
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Bioinspired Gradient-Modulus Iontronic Sensors with Drift-Suppressed Stability for Biomechanical Monitoring
Published 2025“…In biomechanical sensing, achieving flexible sensors with a broad detection range, ultrahigh sensitivity, and long-term stability remains a major challenge. …”
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Research data for paper: Efficient Event-based Delay Learning in Spiking Neural Networks
Published 2025“…Our method supports multiple spikes per neuron and introduces a delay learning algorithm that can, in contrast to previous methods, also be applied to recurrent Spiking Neural Networks. …”
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Raw dataset.
Published 2025“…To address these limitations, this study evaluates different machine learning algorithms for accurate and efficient fault detection using a dataset of triaxial vibrational data converted into current variables. …”
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FFT feature extraction.
Published 2025“…To address these limitations, this study evaluates different machine learning algorithms for accurate and efficient fault detection using a dataset of triaxial vibrational data converted into current variables. …”
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Classification report of XGBoost.
Published 2025“…To address these limitations, this study evaluates different machine learning algorithms for accurate and efficient fault detection using a dataset of triaxial vibrational data converted into current variables. …”
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Confusion matrix of RF.
Published 2025“…To address these limitations, this study evaluates different machine learning algorithms for accurate and efficient fault detection using a dataset of triaxial vibrational data converted into current variables. …”
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Distribution of faults types.
Published 2025“…To address these limitations, this study evaluates different machine learning algorithms for accurate and efficient fault detection using a dataset of triaxial vibrational data converted into current variables. …”
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Classification report of KNN.
Published 2025“…To address these limitations, this study evaluates different machine learning algorithms for accurate and efficient fault detection using a dataset of triaxial vibrational data converted into current variables. …”
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Confusion matrix of XGBoost.
Published 2025“…To address these limitations, this study evaluates different machine learning algorithms for accurate and efficient fault detection using a dataset of triaxial vibrational data converted into current variables. …”
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Confusion matrix of KNN.
Published 2025“…To address these limitations, this study evaluates different machine learning algorithms for accurate and efficient fault detection using a dataset of triaxial vibrational data converted into current variables. …”
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Distribution of fault currents.
Published 2025“…To address these limitations, this study evaluates different machine learning algorithms for accurate and efficient fault detection using a dataset of triaxial vibrational data converted into current variables. …”
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Confusion matrix of DT.
Published 2025“…To address these limitations, this study evaluates different machine learning algorithms for accurate and efficient fault detection using a dataset of triaxial vibrational data converted into current variables. …”
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KNN model working [80].
Published 2025“…To address these limitations, this study evaluates different machine learning algorithms for accurate and efficient fault detection using a dataset of triaxial vibrational data converted into current variables. …”
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Line plots current over fault type.
Published 2025“…To address these limitations, this study evaluates different machine learning algorithms for accurate and efficient fault detection using a dataset of triaxial vibrational data converted into current variables. …”