264 research outputs found

    A Fuzzy Rule Based Approach to Predict Risk Level of Heart Disease

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    Health care domain systems globally face lots of difficulties because of the high amount of risk factors of heart diseases in peoples (WHO, 2013). To reduce risk, improved knowledge based expert systems played an important role and has a contribution towards the development of the healthcare system for cardiovascular disease. To make use of benefits of knowledge based system, it is necessary for health organizations and users; must need to know the fuzzy rule based expert system2019;s integrity, efficiency, and deployments, which are the open challenges of current fuzzy logic based medical systems. In our proposed system, we have designed a fuzzy rule based expert system and also by using data mining technique we have reduced the total number of attributes. Our system mainly focuses on cardiovascular disease diagnosis, and the dataset taken from UCI (Machine Learning Repository). We explored in the existing work. The majority of the researcher2019;s experimentation was made on 14 attributes out of 76. While, in our system we took advantage of 6 attributes for system design. In the preliminary stage UCI, data participated in suggested system that will get outcomes. The performance of the system matched with Neural Network and J48 Decision Tree Algorithm

    Sample Mixed-Based Data Augmentation for Domestic Audio Tagging

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    Audio tagging has attracted increasing attention since last decade and has various potential applications in many fields. The objective of audio tagging is to predict the labels of an audio clip. Recently deep learning methods have been applied to audio tagging and have achieved state-of-the-art performance, which provides a poor generalization ability on new data. However due to the limited size of audio tagging data such as DCASE data, the trained models tend to result in overfitting of the network. Previous data augmentation methods such as pitch shifting, time stretching and adding background noise do not show much improvement in audio tagging. In this paper, we explore the sample mixed data augmentation for the domestic audio tagging task, including mixup, SamplePairing and extrapolation. We apply a convolutional recurrent neural network (CRNN) with attention module with log-scaled mel spectrum as a baseline system. In our experiments, we achieve an state-of-the-art of equal error rate (EER) of 0.10 on DCASE 2016 task4 dataset with mixup approach, outperforming the baseline system without data augmentation.Comment: submitted to the workshop of Detection and Classification of Acoustic Scenes and Events 2018 (DCASE 2018), 19-20 November 2018, Surrey, U

    Model Free Command Filtered Backstepping Control for Marine Power Systems

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    Positive Shift, Social Projection, and Honesty on Social Networking Sites

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    Positive emotions are prevalent on Social Networking Sites (SNS) because of positive shift—users’ tendency to shift the expression of their emotions in the more positive direction. Emotion expressers aim to gain a more positive impression and elevate their social standing through positive shift, but little is known about the unintended consequences of positive shift for the expressors. Drawing on social projection theory and emotional journey theory, we argue that positive shift can lead to social projection and reduce the expressor’s perceived honesty of other SNS users—an important antecedent of trust and satisfaction with SNS, and this is more likely to occur when the user shifts emotions with higher emotional dissonance (i.e., difference between expressed and experienced emotions). We further propose a diversity reminder as a likely remedy that suppresses the social projection process. Using two experiments, we found evidence supporting these predictions. Our findings provide important implications

    The Journey to Self: An Intra-personal Perspective of Emotion Regulation on Social Networking Sites

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    Although social networking sites (SNS) users often share positive emotions in the content posted online, their satisfaction with SNS and intention to continue using it vary greatly across users. We argue that a key to addressing this puzzle is how content creators up-regulate their emotions on SNS. Building on emotion regulation theory and belongingness theory, we characterize digital emotion regulation in two ways (i.e., positive shift and emotional labor) and propose a dual-pathway model that involves two self-views. By constructing three complementary studies, we find that it is emotional labor, rather than positive shift, that drives a user’s sense of belonging through anticipated self-enhancement (i.e., communal self-view) and felt authenticity (i.e., authentic self-view) and explains the varying outcomes. Our findings reveal the benefits of deep acting and countervailing effects of surface acting. The present research provides important theoretical and practical implications

    Adaptive fuzzy sliding mode command-filtered backstepping control for islanded PV microgrid with energy storage system

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    This study focuses on the control of islanded photovoltaic (PV) microgrid and design of a controller for PV system. Because the system operates in islanded mode, the reference voltage and frequency of AC bus are provided by the energy storage system. We mainly designed the controller for PV system in this study, and the control objective is to control the DC bus voltage and output current of PV system. First, a mathematical model of the PV system was set up. In the design of PV system controller, command-filtered backstepping control method was used to construct the virtual controller, and the final controller was designed by using sliding mode control. Considering the uncertainty of circuit parameters in the mathematical model and the unmodeled part of PV system, we have integrated adaptive control in the controller to achieve the on-line identification of component parameters of PV system. Moreover, fuzzy control was used to approximate the unmodeled part of the system. In addition, the projection operator guarantees the boundedness of adaptive estimation. Finally, the control effect of designed controller was verified by MATLAB/Simulink software. By comparing with the control results of proportion-integral (PI) and other controllers, the advanced design of controller was verified

    Adaptive fuzzy sliding mode command-filtered backstepping control for islanded PV microgrid with energy storage system

    Get PDF
    This study focuses on the control of islanded photovoltaic (PV) microgrid and design of a controller for PV system. Because the system operates in islanded mode, the reference voltage and frequency of AC bus are provided by the energy storage system. We mainly designed the controller for PV system in this study, and the control objective is to control the DC bus voltage and output current of PV system. First, a mathematical model of the PV system was set up. In the design of PV system controller, command-filtered backstepping control method was used to construct the virtual controller, and the final controller was designed by using sliding mode control. Considering the uncertainty of circuit parameters in the mathematical model and the unmodeled part of PV system, we have integrated adaptive control in the controller to achieve the on-line identification of component parameters of PV system. Moreover, fuzzy control was used to approximate the unmodeled part of the system. In addition, the projection operator guarantees the boundedness of adaptive estimation. Finally, the control effect of designed controller was verified by MATLAB/Simulink software. By comparing with the control results of proportion-integral (PI) and other controllers, the advanced design of controller was verified
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