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Stable temperature is ideal for hair styling, this framework successfully predicts the future power output (correlated with the temperature) based on the historical data to reduce the time lag.

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arunsinghbabal/Time-Series-Predictive-Analytics-for-Hair-Device

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Time-Series Predictive Analytics for Hair Device

• Aim of the project:
Stabilise the device temperature over a period of time based on the historical data to provide a ideal styling conditions to the user.

• Accomplishments:
– Carried out the data extraction from the device and performed data analysis on it.
– Optimized the parameter values for the ARIMA (non-seasonal),Auto-ARIMA, SARIMAX (seasonal) and LSTM model for better accuracy.
– Able to forecast for a very high frequency data (millisecond’s), which is impressive.

• Deliverable:
Stable temperature is ideal for hair styling, this framework successfully predicts the future power output (correlated with the temperature) to reduce the time lag.

• Breif results:
1. ARIMA:

arima_predict

arima_predict_residual


2. Auto-ARIMA and SARIMAX:

autoarima_predict
autoarima_predict_residual



3. LSTM:

lstm_predict
lstm_predict_residual

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Stable temperature is ideal for hair styling, this framework successfully predicts the future power output (correlated with the temperature) based on the historical data to reduce the time lag.

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