25 research outputs found
Data Analysis Techniques for Smart Nudging
Nudge principles and techniques are significant in communications, marketing, and groupsâ motivation to improve personal health, wealth, and well-being. We make numerous decisions in online situations. Peopleâs health and well-being have garnered widespread interest and concern in this wearableâs age. Smart nudging is defined as âdigital nudging, where the guidance of user behavior is tailored to be relevant to the current situation of each userâ. Emerging digital devices such as smartwatches, smart bands, and smartphones will continuously capture and analyze your activity and health-related data from individuals and communities in their everyday environment. Providing context-aware nudges in these digital health devices will help individuals identify and self-manage their health and physical activity.
This study aims to provide data analysis techniques for smart nudging and examine it susability in developing a smart nudging system to provide context-based nudges that are more likely to succeed
A Modified LeNet CNN for Breast Cancer Diagnosis in Ultrasound Images
Convolutional neural networks (CNNs) have been extensively utilized in medical image
processing to automatically extract meaningful features and classify various medical conditions,
enabling faster and more accurate diagnoses. In this paper, LeNet, a classic CNN architecture,
has been successfully applied to breast cancer data analysis. It demonstrates its ability to extract
discriminative features and classify malignant and benign tumors with high accuracy, thereby
supporting early detection and diagnosis of breast cancer. LeNet with corrected Rectified Linear Unit
(ReLU), a modification of the traditional ReLU activation function, has been found to improve the
performance of LeNet in breast cancer data analysis tasks via addressing the âdying ReLUâ problem
and enhancing the discriminative power of the extracted features. This has led to more accurate,
reliable breast cancer detection and diagnosis and improved patient outcomes. Batch normalization
improves the performance and training stability of small and shallow CNN architecture like LeNet.
It helps to mitigate the effects of internal covariate shift, which refers to the change in the distribution
of network activations during training. This classifier will lessen the overfitting problem and reduce
the running time. The designed classifier is evaluated against the benchmarking deep learning
models, proving that this has produced a higher recognition rate. The accuracy of the breast image
recognition rate is 89.91%. This model will achieve better performance in segmentation, feature
extraction, classification, and breast cancer tumor detection
Influence of Biosynthesized Nanoparticles Addition and Fibre Content on the Mechanical and Moisture Absorption Behaviour of Natural Fibre Composite
This study looks at how incorporating nanofiller into sisal/flax-fibre-reinforced epoxy-based hybrid composites affects their mechanical and water absorption properties. The green Al2O3 NPs are generated from neem leaves in a proportion of leaf extract to an acceptable aluminium nitrate combination. Both natural fibres were treated with different proportions of NaOH to eliminate moisture absorption. The following parameters were chosen as essential to achieving the objectives mentioned above: (i) 0, 5, 10, and 15% natural fibre concentrations; (ii) 0, 2, 4, and 6% aluminium powder concentrations; and (iii) 0, 1, 3, and 5% NaOH concentrations. Compression moulding was used to create the hybrid nanocomposites and ASTM standards were used for mechanical testing such as tension, bending, and impact. The findings reveal that combining sisal/flax fibre composites with nanofiller improved the mechanical features of the nanocomposite. The sisal and flax fibre hybridised successfully, with 10% fibres and 4% aluminium filler. The water absorption of the hybrids rose as the fibre weight % increased, and during the next 60 h, all of the specimens achieved equilibrium. The failed samples were examined using scanning electron Microscopic (SEM) images better to understand the compositeâs failure in the mechanical experimentations. Al2O3 NPs were confirmed through XRD, UV spectroscope and HPLC analysis. According to the HPLC results, the leafâs overall concentrations of flavonoids (gallocatechin, carnosic acid, and camellia) are determined to be 0.250 mg/g, 0.264 mg/g, and 0.552 mg/g, respectively. The catechin concentration is higher than the phenolic and caffeic acid levels, which could have resulted in a faster rate of reduction among many of the varying configurations, 4 wt.% nano Al2O3 particle, 10 wt.% flax and sisal fibres, as well as 4 h of NaOH with a 5 wt.% concentration, producing the maximum mechanical properties (59.94 MPa tension, 149.52 Mpa bending, and 37.9 KJ/m2 impact resistance). According to the results, it can be concluded that botanical nutrients may be used effectively in the manufacturing of nanomaterials, which might be used in various therapeutic and nanoscale applications
Data collection and analysis methods for smart nudging to promote physical activity: Protocol for a mixed methods study
New digital technologies like activity trackers, nudge concepts, and approaches can inspire and improve personal health. There is increasing interest in employing such devices to monitor peopleâs health and well-being. These devices can continually gather and examine health-related information from people and groups in their familiar surroundings. Context-aware nudges can assist people in self-managing and enhancing their health. In this protocol paper, we describe how we plan to investigate what motivates people to engage in physical activity (PA), what influences them to accept nudges, and how participant motivation for PA may be impacted by technology use
Effectiveness of LRB in Curved Bridge Isolation: A Numerical Study
Lead Rubber Bearings (LRBs) represent one of the most widely employed devices for
the seismic protection of structures. However, the effectiveness of the same in the case of curved
bridges has not been judged well because of the complexity involved in curved bridges, especially in
controlling torsional moments. This study investigates the performance of an LRB-isolated horizontally
curved continuous bridge under various seismic loadings. The effectiveness of LRBs on the bridge
response control was determined by considering various aspects, such as the changes in ground
motion characteristics, multidirectional effects, the degree of seismic motion, and the variation of
incident angles. Three recorded ground motions were considered in this study, representing historical
earthquakes with near-field, far-field, and forward directivity effects. The effectiveness of the bidirectional behavior considering the interaction effect of the bearing and pier was also studied.
The finite element method was adopted. A sensitivity study of the bridge response related to the
bearing design parameters was carried out for the considered ground motions. The importance of
non-linearity and critical design parameters of LRBs were assessed. It was found that LRBs resulted
in a significant increase in deck displacement for Turkey ground motion, which might be due to the
forward directivity effect. The bi-directional effect is crucial for the curved bridge as it enhances the
displacement significantly compared to uni-directional motion
Unified Power Control of Permanent Magnet Synchronous Generator Based Wind Power System with Ancillary Support during Grid Faults
A unified active power control scheme is devised for the grid-integrated permanent magnet synchronous generator-based wind power system (WPS) to follow the Indian electricity grid code requirements. The objective of this paper is to propose control schemes to ensure the continuous integration of WPS into the grid even during a higher percentage of voltage dip. In this context, primarily a constructive reactive power reference is formulated to raise and equalize the point of common coupling (PCC) potential during symmetrical and asymmetrical faults, respectively. A simple active power reference is also proposed to inject a consistent percentage of generated power even during faults without violating system ratings. Eventually, the efficacy of the proposed scheme is demonstrated in terms of PCC voltage enhancement, DC-link potential, grid real, and reactive power oscillation minimization using the PSCAD/ EMTDC software
Experimental probe into an automative engine run on waste cooking oil biodiesel blend at varying engine speeds
The present work attempts to evaluate the performance of an automotive diesel engine run on waste cooking oil
biodiesel (WCO) blend at variable engine speeds. The composition of the blend (B40) used in the study is 40%
WCO and 60% diesel by volume and the engine used for the experimentation is a naturally aspirated, watercooled and direct injection type having a compression ratio of 18:1. The engine settings used in the study are
an injection timing (IT) of 150
bTDC and a fuel injection pressure (IP) of 500 bar. The performance and emissions
characteristics of the automotive engine are studied at various loads of 20%, 40%, 60%, 80% and 100% and at
different engine speeds of 1500, 1800 and 2400 rpm. The first two rotational speeds are chosen to study the
stationary power generation capabilities of the blend, while the feasibility of blend for automotive applications
has been evaluated at 2400 rpm. Experiments have also been conducted on the engine run on mineral diesel fuel
in order to make a comparative analysis. At full load, the maximum brake thermal efficiency (BTE) is found to be
21.51%, 25.48% and 23.56% for the blend at 1500, 1800 and 2400 rpm, respectively. At 2400 rpm and at 20%
and 40% loads, the blend shows an absolute improvement in BTE of 0.17% and 0.03%, respectively over diesel
fuel. On an average, there is a decrease of carbon monoxide (CO) emissions by 87.5%, 22.22% and 14.28% at
1500, 1800 and 2400 rpm as compared to diesel fuel. At 1500 and 2400 rpm, there is an average absolute increase in hydrocarbon (HC) emissions by 1.6 ppm and 9.6 ppm, respectively; while at 1800 rpm, an average
decrease in HC emissions by 4 ppm is observed vis-a-vis diesel fuel. While emissions of oxides of nitrogen (NOx)
as compared to diesel fuel increased on an average by 19.43%, 26.09% and 1.01% at 1500, 1800 and 2400 rpm,
respectively
Statistical experiment analysis of wear and mechanical behaviour of abaca/sisal fiber-based hybrid composites under liquid nitrogen environment
Ice accretion on various onshore and offshore infrastructures imparts hazardous effects sometimes beyond repair,
which may be life-threatening. Therefore, it has become necessary to look for ways to detect and mitigate ice.
Some ice mitigation techniques have been tested or in use in aviation and railway sectors, however, their
applicability to other sectors/systems is still in the research phase. To make such systems autonomous, ice
protection systems need to be accompanied by reliable ice detection systems, which include electronic,
mechatronics, mechanical, and optical techniques. Comparing the benefits and limitations of all available
methodologies, Infrared Thermography (IRT) appears to be one of the useful, non-destructive, and emerging
techniques as it offers wide area monitoring instead of just point-based ice monitoring. This paper reviews the
applications of IRT in the field of icing on various subject areas to provide valuable insights into the existing
development of an intelligent and autonomous ice mitigation system for general applications
Enhancing mechanical performance of TiO2 filler with Kevlar/epoxy-based hybrid composites in a cryogenic environment: a statistical optimization study using RSM and ANN methods
This research aims to investigate the mechanical performance of the different weight proportions of nano-TiO2 combined with Kevlar fiber-based hybrid composites under cryogenic conditions. The following parameters were thus considered: (i) Kevlar fiber mat type (100 and 200 gsm); (ii) weight proportions of TiO2 nanofiller (2 and 6 wt%); and (iii) cryogenic processing time (10â30 min at â196°C). The composites were fabricated through compression molding techniques. After fabrication, the mechanical characteristics of the prepared nanocompositesâsuch as tensile, bending, and impact propertiesâwere evaluated. The optimal mechanical strength of nanofiller-based composites was analyzed using response surface methodology (RSM) and artificial neural networks (ANNs). Compositions, such as four weight percentages of nano-TiO2 filler, 200 gsm of the Kevlar fiber mat, and 20 min of cryogenic treatment, were shown to produce the maximum mechanical strength (65.47 MPa of tensile, 97.34 MPa of flexural, and 52.82 J/m2 of impact). This is because residual strains are produced at low temperatures (cryogenic treatment) due to unstable matrices and fiber contraction. This interfacial stress helps maintain a relationship between the reinforcement and resin and improves adhesion, leading to improved results. Based on statistical evaluation, the ratio of correlation (R2), mean square deviation, and average error function of the experimental and validation data sets of the experimental models were analyzed. The ANN displays 0.9864 values for impact, 0.9842 for flexural, and 0.9764 for tensile. ANN and RSM models were used to forecast the mechanical efficiency of the suggested nanocomposites with up to 95% reliability
Selection of Response Reduction Factor Considering Resilience Aspect
The selection of an adequate response reduction factor (R) in the seismic design of a reinforced concrete building is critical to the buildingâs seismic response. To construct a robust structure, the R factor should be chosen based on the buildingâs resilience performance. Since no background was provided for the selection of R factors, the study focuses on the right selection of R factors in relation to the buildingâs functionality, performance level, and resilience. In this study, a high-rise building with multiple R factors (R = 3, 4, 5, and 6) is developed. Five potential recovery paths (RP-1 to RP-5) that matched the realistic scenario were used to estimate the buildingâs functionality. The building was subjected to uni and bi-directional loadings, and two design levels, Design Basic Earthquake (DBE) and Maximum Considered Earthquake were used to monitor the buildingâs response. According to the findings, a decrease in the lateral design force with the highest R results in a high ductility requirement and a substantial loss of resilience. The maximum R factor can be recommended under uni-directional loading up to 6, in which the buildingâs resilience is almost 50%, whereas under bi-directional loading and taking the recommended R factor decreased from 6 to 4