47 research outputs found
Sparsity-Based Error Detection in DC Power Flow State Estimation
This paper presents a new approach for identifying the measurement error in
the DC power flow state estimation problem. The proposed algorithm exploits the
singularity of the impedance matrix and the sparsity of the error vector by
posing the DC power flow problem as a sparse vector recovery problem that
leverages the structure of the power system and uses -norm minimization
for state estimation. This approach can provably compute the measurement errors
exactly, and its performance is robust to the arbitrary magnitudes of the
measurement errors. Hence, the proposed approach can detect the noisy elements
if the measurements are contaminated with additive white Gaussian noise plus
sparse noise with large magnitude. The effectiveness of the proposed
sparsity-based decomposition-DC power flow approach is demonstrated on the IEEE
118-bus and 300-bus test systems
Robust CNN-based Respiration Rate Estimation for Smartwatch PPG and IMU
Respiratory rate (RR) serves as an indicator of various medical conditions,
such as cardiovascular diseases and sleep disorders. These RR estimation
methods were mostly designed for finger-based PPG collected from subjects in
stationary situations (e.g., in hospitals). In contrast to finger-based PPG
signals, wrist-based PPG are more susceptible to noise, particularly in their
low frequency range, which includes respiratory information. Therefore, the
existing methods struggle to accurately extract RR when PPG data are collected
from wrist area under free-living conditions. The increasing popularity of
smartwatches, equipped with various sensors including PPG, has prompted the
need for a robust RR estimation method. In this paper, we propose a
convolutional neural network-based approach to extract RR from PPG,
accelerometer, and gyroscope signals captured via smartwatches. Our method,
including a dilated residual inception module and 1D convolutions, extract the
temporal information from the signals, enabling RR estimation. Our method is
trained and tested using data collected from 36 subjects under free-living
conditions for one day using Samsung Gear Sport watches. For evaluation, we
compare the proposed method with four state-of-the-art RR estimation methods.
The RR estimates are compared with RR references obtained from a chest-band
device. The results show that our method outperforms the existing methods with
the Mean-Absolute-Error and Root-Mean-Square-Error of 1.85 and 2.34, while the
best results obtained by the other methods are 2.41 and 3.29, respectively.
Moreover, compared to the other methods, the absolute error distribution of our
method was narrow (with the lowest median), indicating a higher level of
agreement between the estimated and reference RR values
Impact of Physical Activity on Quality of Life During Pregnancy: A Causal ML Approach
The concept of Quality of Life (QoL) refers to a holistic measurement of an
individual's well-being, incorporating psychological and social aspects.
Pregnant women, especially those with obesity and stress, often experience
lower QoL. Physical activity (PA) has shown the potential to enhance the QoL.
However, pregnant women who are overweight and obese rarely meet the
recommended level of PA. Studies have investigated the relationship between PA
and QoL during pregnancy using correlation-based approaches. These methods aim
to discover spurious correlations between variables rather than causal
relationships. Besides, the existing methods mainly rely on physical activity
parameters and neglect the use of different factors such as maternal (medical)
history and context data, leading to biased estimates. Furthermore, the
estimations lack an understanding of mediators and counterfactual scenarios
that might affect them. In this paper, we investigate the causal relationship
between being physically active (treatment variable) and the QoL (outcome)
during pregnancy and postpartum. To estimate the causal effect, we develop a
Causal Machine Learning method, integrating causal discovery and causal
inference components. The data for our investigation is derived from a
long-term wearable-based health monitoring study focusing on overweight and
obese pregnant women. The machine learning (meta-learner) estimation technique
is used to estimate the causal effect. Our result shows that performing
adequate physical activity during pregnancy and postpartum improves the QoL by
units of 7.3 and 3.4 on average in physical health and psychological domains,
respectively. In the final step, four refutation analysis techniques are
employed to validate our estimation
Robust PPG Peak Detection Using Dilated Convolutional Neural Networks
Accurate peak determination from noise-corrupted photoplethysmogram (PPG) signal is the basis for further analysis of physiological quantities such as heart rate. Conventional methods are designed for noise-free PPG signals and are insufficient for PPG signals with low signal-to-noise ratio (SNR). This paper focuses on enhancing PPG noise-resiliency and proposes a robust peak detection algorithm for PPG signals distorted due to noise and motion artifact. Our algorithm is based on convolutional neural networks (CNNs) with dilated convolutions. We train and evaluate the proposed method using a dataset collected via smartwatches under free-living conditions in a home-based health monitoring application. A data generator is also developed to produce noisy PPG data used for model training and evaluation. The method performance is compared against other state-of-the-art methods and is tested with SNRs ranging from 0 to 45 dB. Our method outperforms the existing adaptive threshold, transform-based, and machine learning methods. The proposed method shows overall precision, recall, and F1-score of 82%, 80%, and 81% in all the SNR ranges. In contrast, the best results obtained by the existing methods are 78%, 80%, and 79%. The proposed method proves to be accurate for detecting PPG peaks even in the presence of noise.</p
A comprehensive accuracy assessment of Samsung smartwatch heart rate and heart rate variability
Background: Photoplethysmography (PPG) is a low-cost and easy-to-implement method to measure vital signs, including heart rate (HR) and pulse rate variability (PRV) which widely used as a substitute of heart rate variability (HRV). The method is used in various wearable devices. For example, Samsung smartwatches are PPG-based open-source wristbands used in remote well-being monitoring and fitness applications. However, PPG is highly susceptible to motion artifacts and environmental noise. A validation study is required to investigate the accuracy of PPG-based wearable devices in free-living conditions.Objective: We evaluate the accuracy of PPG signals-collected by the Samsung Gear Sport smartwatch in free-living conditions-in terms of HR and time-domain and frequency-domain HRV parameters against a medical-grade chest electrocardiogram (ECG) monitor.Methods: We conducted 24-hours monitoring using a Samsung Gear Sport smartwatch and a Shimmer3 ECG device. The monitoring included 28 participants (14 male and 14 female), where they engaged in their daily routines. We evaluated HR and HRV parameters during the sleep and awake time. The parameters extracted from the smartwatch were compared against the ECG reference. For the comparison, we employed the Pearson correlation coefficient, Bland-Altman plot, and linear regression methods.Results: We found a significantly high positive correlation between the smartwatch's and Shimmer ECG's HR, time-domain HRV, LF, and HF and a significant moderate positive correlation between the smartwatch's and shimmer ECG's LF/HF during sleep time. The mean biases of HR, time-domain HRV, and LF/HF were low, while the biases of LF and HF were moderate during sleep. The regression analysis showed low error variances of HR, AVNN, and pNN50, moderate error variances of SDNN, RMSSD, LF, and HF, and high error variances of LF/HF during sleep. During the awake time, there was a significantly high positive correlation of AVNN and a moderate positive correlation of HR, while the other parameters indicated significantly low positive correlations. RMSSD and SDNN showed low mean biases, and the other parameters had moderate mean biases. In addition, AVNN had moderate error variance while the other parameters indicated high error variances.Conclusion: The Samsung smartwatch provides acceptable HR, time-domain HRV, LF, and HF parameters during sleep time. In contrast, during the awake time, AVNN and HR show satisfactory accuracy, and the other HRV parameters have high errors.</p