2020
DOI: 10.3390/s20174699
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A New Real-Time Pinch Detection Algorithm Based on Model Reference Kalman Prediction and SRMS for Electric Adjustable Desk

Abstract: : This paper presents a new algorithm based on model reference Kalman torque prediction algorithm combined with the sliding root mean square (SRMS). It is necessary to improve the accuracy and reliability of the pinch detection for avoiding collision with the height adjustable desk and accidents on users. Motors need to regulate their position and speed during the operation using different voltage by PWM (Pulse Width Modulation) to meet the requirement of position synchronization. It causes much noise and coup… Show more

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“…It is necessary to ensure that the model cannot reverse the sequence order. When the model predicts time T, data of future time such as T + 1 and T + 2 cannot be used [18]. However, in the traditional one-dimensional convolutional neural network, the convolution checks the time data before and after the convolution calculation, which inevitably uses the future time data for modeling, that is, information leakage.…”
Section: Causal Convolutionmentioning
confidence: 99%
“…It is necessary to ensure that the model cannot reverse the sequence order. When the model predicts time T, data of future time such as T + 1 and T + 2 cannot be used [18]. However, in the traditional one-dimensional convolutional neural network, the convolution checks the time data before and after the convolution calculation, which inevitably uses the future time data for modeling, that is, information leakage.…”
Section: Causal Convolutionmentioning
confidence: 99%