Application of piezoelectric intelligent materials in pipa adaptive tuning system and its influence on performance stability
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A dataset of 2,000 samples was collected, including voltage (0.1â5 V), temperature (10â40°C), and humidity (20â90% RH) values, along with corresponding output adjustments. The NFIS utilised Gaussian membership functions to categorise sensor inputs into linguistic terms (e.g., âHigh Voltage,â âMedium Temperatureâ), and a comprehensive rule base of 40 rules was established for adaptive tuning. Training of the NFIS was conducted using gradient-descent backpropagation with a learning rate of 0.01 and L2 regularisation, validated through 5-fold cross-validation. Real-time performance data was transmitted via an ESP32 microcontroller to an AWS IoT Core database, with user adjustments and data visualisation provided through a mobile application., Materials used in the study included; Lead Zirconate Titanate (PZT) Sensors (Model PZT-5H, APC International, USA); Light Aluminum Non-Invasive Adjustable Attachment Brackets (Misumi Corporation, Japan); Velcro Straps (Velcro USA Inc., USA); Shielded Flexible Cables (Alpha Wire, USA); Cable Ties or Clips (Panduit Corporation, USA); DS18B20 Digital Temperature Sensors (Maxim Integrated, USA); Torque Wrench (Tohnichi, Japan); 24-bit ADC Module (Model ADS1256, Texas Instruments, USA); Butterworth Low-Pass Filter (Custom component, configured with parts from Texas Instruments, USA); High-Pass Filter (Custom component, configured with parts from Texas Instruments, USA); 0.1 µF Ceramic Capacitors (Murata Manufacturing Co., Ltd., Japan); 10 µF Electrolytic Capacitors (Nichicon Corporation, Japan)
A dataset of 2,000 samples was collected, including voltage (0.1â5 V), temperature (10â40°C), and humidity (20â90% RH) values, along with corresponding output adjustments. The NFIS utilised Gaussian m..., , # Data from: Application of piezoelectric intelligent materials in pipa adaptive tuning system and its influence on performance stability
[https://doi.org/10.5061/dryad.12jm63z87](https://doi.org/10.5061/dryad.12jm63z87)
## Description of the data and file structure
A dataset of 2,000 samples was collected, including voltage (0.1â5 V), temperature (10â40 °C), and humidity (20â90 % RH) values, along with corresponding output adjustments. The NFIS utilised Gaussian membership functions to categorise sensor inputs into linguistic terms (e.g., âHigh Voltage,â âMedium Temperatureâ), and a comprehensive rule base of 40 rules was established for adaptive tuning. Training of the NFIS was conducted using gradient-descent backpropagation with a learning rate of 0.01 and L2 regularisation, validated through 5-fold cross-validation. Real-time performance data was transmitted via an ESP32 microcontroller to an AWS IoT Core database, with user adjustments and data visualisation provided through a ...,
创建时间:
2025-12-12



