13 research outputs found
Forecasting the Performance of US Stock Market Indices During COVID-19: RF vs LSTM
The US stock market experienced instability following the recession
(2007-2009). COVID-19 poses a significant challenge to US stock traders and
investors. Traders and investors should keep up with the stock market. This is
to mitigate risks and improve profits by using forecasting models that account
for the effects of the pandemic. With consideration of the COVID-19 pandemic
after the recession, two machine learning models, including Random Forest and
LSTM are used to forecast two major US stock market indices. Data on historical
prices after the big recession is used for developing machine learning models
and forecasting index returns. To evaluate the model performance during
training, cross-validation is used. Additionally, hyperparameter optimizing,
regularization, such as dropouts and weight decays, and preprocessing improve
the performances of Machine Learning techniques. Using high-accuracy machine
learning techniques, traders and investors can forecast stock market behavior,
stay ahead of their competition, and improve profitability. Keywords: COVID-19,
LSTM, S&P500, Random Forest, Russell 2000, Forecasting, Machine Learning, Time
Series JEL Code: C6, C8, G4.Comment: Pennsylvania Economic Association (PEA)- June 202
Acoustic-Based Online Monitoring of Cooling Fan Malfunction in Air-Forced Transformers Using Learning Techniques
Cooling fans are one of the critical components of air-forced dry-type transformers for regulating internal temperatures. Therefore, effective malfunction detection is crucial to maintain the transformer temperature within an acceptable range and prevent overheating. Current malfunction detection of cooling fans in certain types of transformers relies on complementary indicators, such as top-oil temperature, oil convection, dissolved gas, and oil quality. However, these conventional indicators are not directly applicable to air-forced transformers, which primarily use cooling fans as their cooling system. To overcome this challenge, this study utilizes cooling fan audio records as indicators. The audio signals are classified into normal and malfunctioning classes using advanced learning algorithms, including convolutional neural networks and random forests. Learning algorithms require transforming recorded audio data into proper formats. Accordingly, convolutional neural networks are trained based on spectrogram images derived from audio signals. For random forests, various time-frequency feature extraction methods are used to derive meaningful representations from audio signals. Besides, multiple data augmentation techniques are employed to enhance the dataset size and diversity. Algorithmic performance is optimized through hyperparameter tuning and classifier threshold adjustment. To further validate the model, a test is conducted on another dataset to evaluate the fitted learning model applicability in real-world applications. Simulations reveal that convolutional neural networks outperform random forests, whereas the latter provides superior interpretability of acoustic features compared to the former
Optimization of Residential Demand Response Program Cost with Consideration for Occupants Thermal Comfort and Privacy
Residential consumers can use the demand response program (DRP) if they can
utilize the home energy management system (HEMS), which reduces consumer costs
by automatically adjusting air conditioning (AC) setpoints and shifting some
appliances to off-peak hours. If HEMS knows occupancy status, consumers can
gain more economic benefits and thermal comfort. However, for the building
occupancy status, direct sensing is costly, inaccurate, and intrusive for
residents. So, forecasting algorithms could serve as an effective alternative.
The goal of this study is to present a non-intrusive, accurate, and
cost-effective approach, to develop a multi-objective simulation model for the
application of DRPs in a smart residential house, where (a) electrical load
demand reduction, (b) adjustment in thermal comfort (AC) temperature setpoints,
and (c) , worst cases scenario approach is very conservative. Because that is
unlikely all uncertain parameters take their worst values at all times. So, the
flexible robust counterpart optimization along with uncertainty budgets is
developed to consider uncertainty realistically. Simulated results indicate
that considering uncertainty increases the costs by 36 percent and decreases
the AC temperature setpoints. Besides, using DRPs reduces demand by shifting
some appliance operations to off-peak hours and lowers costs by 13.2 percent