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    Reports Summarize Machine Learning Study Results from University of Oklahoma (Applications of Machine Learning Methods To Predict Hole Cleaning In Horizontal and Highly Deviated Wells)

    77-78页
    查看更多>>摘要:Current study results on Machine Learning have been published. According to news originating from Norman, Oklahoma, by NewsRx correspondents, research stated, "Machine learning (ML) has become a robust method for modeling field operations based on measurements. For example, wellbore cleanout is a critical operation that needs to be optimized to enhance the removal of solids to reduce problems associated with poor hole cleaning." Financial supporters for this research include NPRP grant, University of Oklahoma, Qatar National Research Fund (QNRF), Qatar National Research Fund (QNRF). Our news journalists obtained a quote from the research from the University of Oklahoma, "However, as wellbore geometry becomes more complicated, predicting the cleaning performance of fluids becomes more challenging. As a result, optimization is often difficult. Therefore, this research focuses on developing a data- driven model for predicting hole cleaning in deviated wells to optimize drilling performance.More than 500 flow loop measurements from eight studies are used to formulate a suitable ML model to forecast hole cleanout in directional wells. Measurements were obtained from hole- cleaning experiments that were conducted using different loop configurations. Experiments ranged in test- section length from 22 to 100 ft, in hole diameter from 4 to 8 in., and in pipe diameter from 2 to 4.5 in. The experiments provided measured equilibrium bed height at a specific flow rate for various fluids, including water- based and synthetic- based fluids and fluids containing fibers. Several relevant test parameters, including fluid and cutting properties, well inclination, and drillstring rotation speed (drillpipe rev/min), were also considered in the analysis. The collected data have been analyzed using the Cross- Industry Standard Process for Data Mining. This paper is unique because it systematically evaluates various ML models for their ability to describe hole cleanout processes. Six different ML techniques: boosted decision tree (BDT), random forest (RF), linear regression, multivariate adaptive regression spline (MARS), neural networks, and support vector machine (SVM) have been evaluated to select the most appropriate method for predicting bed thickness in a wellbore. Also, we compared the predictions of the selected ML method with those of a mechanistic model for cases without drillstring rotation. Finally, using the ML model, a parametric study has been conducted to examine the impact of various parameters on the cleanout performance of selected fluids.The results show the relative influence of different variables on the prediction of cuttings bed. Accordingly, flow rate, drillpipe rev/ min, and fluid behavior index have a strong impact on dimensionless bed thickness, while other parameters such as fluid consistency index, solids density and diameter, fiber concentration, and well inclination angle have a moderate effect. The BDT algorithm has provided the most accurate prediction with an R2 of 92%, a root- mean- square error (RMSE) of 0.06, and a mean absolute error (MAE) of roughly 0.05."

    Technical University Reports Findings in Robotics (Design and eval- uation of a smart passive dynamic arm support for robotic-assisted laparoscopic surgery)

    78-79页
    查看更多>>摘要:New research on Robotics is the subject of a report. According to news reporting originating in Delft, Netherlands, by NewsRx journalists, research stated, "Surgeons performing robotic- assisted laparoscopic surgery experience physical stress and overuse of shoulder muscles due to sub-optimal arm support during surgery. The objective is to present a novel design and prototype of a dynamic arm support for robotic laparoscopic surgery to evaluate its ergonomics and performance on the AdLap-VR simulation training device." The news reporters obtained a quote from the research from Technical University, "The prototype was designed using the mechanical engineering design process: Technical requirements, concept creation, concept selection, 3D-design and built of the prototype. A crossover study was performed on a marble sorting task on the AdLap-VR. The first group performed four trials without the arm support, followed by four trials with the arm support, and the other group executed the sequence vice versa. The performance parameters used were time to complete (s), path length (mm), and the number of collisions. Afterward, the participants filled out a questionnaire on the ergonomic experience regarding both situations. 20 students executed 160 performed trials on the AdLap-VR Significant decreases in the subjective comfort parameters mental demand, physical demand, effort and frustration were observed as a result of introducing the novel arm support. Significant decreases in the objective performance parameters path length and the number of collisions were also observed during the tests."

    Researchers from Shanghai Jiao Tong University Provide Details of New Studies and Findings in the Area of Robotics (Multi-objective Trajectory Planning for Segment Assembly Robots Using a B-spline Interpolation- and Infeasible-updating ...)

    79-80页
    查看更多>>摘要:Research findings on Robotics are discussed in a new report. According to news origi- nating from Shanghai, People's Republic of China, by NewsRx correspondents, research stated, "The rapid and smooth functioning of segment assembly robots, which is always conflicting, is critical to improving efficiency and ensuring safety during tunneling construction, particularly for the series-actuated robots em- ployed in non-circular shield machines. However, the trade-off between the aforementioned goals has not been explored for trajectory planning in joint space." Funders for this research include National Natural Science Foundation of China (NSFC), Shanghai Rising-Star Program, Shanghai Pujiang Program, State Key Laboratory of Mechanical System and Vibra- tion, Center for High Performance Computing at Shanghai Jiao Tong University.

    Studies from I.M. Sechenov First Moscow State Medical University in the Area of Artificial Intelligence Described (The Use of Artificial Intelligence In Teaching Medical Students To Increase Motivation and Reduce Anxiety During Academic Practice)

    81-82页
    查看更多>>摘要:A new study on Artificial Intelligence is now available. According to news reporting out of Moscow, Russia, by NewsRx editors, research stated, "Artificial intelligence opens up new perspectives and possibilities for modern education. The use of intelligent learning support systems is becoming an increasingly relevant aspect of the educational process." Our news journalists obtained a quote from the research from I.M. Sechenov First Moscow State Medical University, "This study used experimental design to identify the influence of an intelligent learning support system on the motivation and anxiety of medical students. The study involved 246 medical students from I.M. Sechenov First Moscow State Medical University. The results showed that the use of the intelligent learning support system led to a statistically significant increase in the motivation of medical students in the experimental group. In addition, there was a statistically significant decrease in the anxiety of participants in this group. The practical significance of the study lies in the conclusion that an intelligent learning support system can effectively increase the motivation of medical students and reduce their anxiety. It is significant to observe that this investigation's findings may hold broad relevance for diverse student cohorts across the spectrum of educational domains in which intelligent learning support systems are employed. This finding can have important implications for educational practice, teaching medical students, and improving their educational experience. Further research should delve into the impact mechanisms of intelligent learning support systems on motivation and anxiety."

    New Artificial Intelligence Findings from Jawaharlal Nehru Medical College Described (Review of the potential benefits and challenges of artificial intelligence in clinical laboratory)

    81-81页
    查看更多>>摘要:Research findings on artificial intelligence are discussed in a new report. According to news originating from Jawaharlal Nehru Medical College by NewsRx correspondents, research stated, "Over the past few years, medical artificial intelligence (AI) has been extensively utilized within the healthcare industry." The news editors obtained a quote from the research from Jawaharlal Nehru Medical College: "However, the deployment of AI raises complicated social and ethical issues related to security, privacy, and human rights. While the use of artificial intelligence (AI) has the potential to improve healthcare outcomes and operational efficiency, this article gives a detailed assessment of current cutting-edge AI breakthroughs in clinical laboratories. It focuses on the potential benefits of AI and its application in clinical laboratory."

    Research from Arizona State University Yields New Findings on Robotics (Design of a wearable shoulder exoskeleton robot with dual-purpose gravity compensation and a compliant misalignment compensation mechanism)

    82-83页
    查看更多>>摘要:Investigators publish new report on robotics. According to news originating from Tempe, Arizona, by NewsRx correspondents, research stated, "This paper presents the design and validation of a wearable shoulder exoskeleton robot intended to serve as a platform for assistive controllers that can mitigate the risk of musculoskeletal disorders seen in workers." Financial supporters for this research include Division of Civil, Mechanical And Manufacturing Innova- tion. Our news journalists obtained a quote from the research from Arizona State University: "The design features a four-bar mechanism that moves the exoskeleton's center of mass from the upper shoulders to the user's torso, dual-purpose gravity compensation mechanism located inside the four-bar's linkages that supports the full gravitational loading from the exoskeleton with partial user's arm weight compensation, and a novel 6 degree-of-freedom (DoF) compliant misalignment compensation mechanism located between the end effector and the user's arm to allow shoulder translation while maintaining control of the arm's direction. Simulations show the four-bar design lowers the center of mass by $ 11 $ cm and the kinematic chain can follow the motion of common upper arm trajectories. Experimental tests show the gravity com- pensation mechanism compensates gravitational loading within $ \pm 0.5 $ Nm over the range of shoulder motion and the misalignment compensation mechanism has the desired 6 DoF stiffness characteristics and range of motion to adjust for shoulder center translation."

    New Machine Learning Study Results Reported from Tsinghua Uni- versity (Galaxy stellar and total mass estimation using machine learning)

    83-84页
    查看更多>>摘要:2024 FEB 22 (NewsRx) – By a News Reporter-Staff News Editor at Robotics & Machine Learning Daily News – Research findings on artificial intelligence are discussed in a new report. According to news reporting originating from Beijing, People's Republic of China, by NewsRx correspondents, research stated, "Conventional galaxy mass estimation methods suffer from model assumptions and degeneracies." The news correspondents obtained a quote from the research from Tsinghua University: "Machine learning, which reduces the reliance on such assumptions, can be used to determine how well present- day observations can yield predictions for the distributions of stellar and dark matter. In this work, we use a general sample of galaxies from the TNG100 simulation to investigate the ability of multi-branch convolutional neural network (CNN) based machine learning methods to predict the central (i.e., within 1 - 2 effective radii) stellar and total masses, and the stellar mass-to-light ratio M*/L. These models take galaxy images and spatially-resolved mean velocity and velocity dispersion maps as inputs. Such CNN- based models can in general break the degeneracy between baryonic and dark matter in the sense that the model can make reliable predictions on the individual contributions of each component. For example, with r-band images and two galaxy kinematic maps as inputs, our model predicting M*/L has a prediction uncertainty of 0.04 dex. Moreover, to investigate which (global) features significantly contribute to the correct predictions of the properties above, we utilize a gradient boosting machine."

    Data on Machine Learning Reported by a Researcher at University of Houston (Petrophysical Property Prediction from Seismic Inversion Attributes Using Rock Physics and Machine Learning: Volve Field, North Sea)

    84-85页
    查看更多>>摘要:New study results on artificial intelligence have been published. According to news reporting from Houston, Texas, by NewsRx journalists, research stated, "An accurate petrophysical model of the subsurface is essential for resource development and CO2 sequestration. We present a new workflow that provides a high-resolution estimate of petrophysical reservoir properties using seismic data with rock physics modeling and machine-learning techniques (i.e., deep learning neural networks)." Funders for this research include Subsea Systems Institute; Allied Geophysics Laboratory (Agl) At The University of Houston. Our news reporters obtained a quote from the research from University of Houston: "First, we compare the sequential prediction of the following petrophysical attributes: mineralogy, porosity, and fluid saturation, with the simultaneous prediction of all of the properties using the Volve field in the Norwegian North Sea as an example. The workflow shows that the sequential prediction produces a more efficient and accurate classification of petrophysical properties (the RMS error between the predicted and the original seismic trace is 50% smaller for the sequential compared to the simultaneous procedure). Next, the seismic amplitude response of the reservoirs was studied using rock physics modeling and amplitude versus offset (AVO) analysis to distinguish the different lithologies and fluid types. To ascertain the optimal hydrocarbon production areas, we performed Bayesian seismic inversion and applied machine learning to estimate the petrophysical properties. We examined how porosity, Vclay, and fluid variations affect the elastic properties. In Poisson's ratio versus the P-wave impedance domain, a 10% porosity increase decreases the acoustic impedance (AI) by 30%, while a 20% Vclay decrease increases the AI by 12%. The Utsira Formation in the Volve field (5 km north of the Sleipner 0st field) was evaluated as a potential CO2 geological storage unit using Gassmann fluid substitution and seismic modeling."

    New Machine Learning Findings from Tilburg University Reported (Transition Paths for Condition-based Maintenance-driven Smart Services)

    85-86页
    查看更多>>摘要:New research on Machine Learning is the subject of a report. According to news origi- nating from Tilburg, Netherlands, by NewsRx correspondents, research stated, "This research investigates growth inhibitors for smart services driven by condition-based maintenance (CBM). Despite the fast rise of Industry 4.0 technologies, such as smart sensoring, internet of things, and machine learning (ML), smart services have failed to keep pace." Financial supporters for this research include Netherlands Organization for Scientific Research (NWO), Dutch Institute for Advanced Logistics (DINALOG). Our news journalists obtained a quote from the research from Tilburg University, "Combined, these technologies enable CBM to achieve the lean goal of high reliability and low waste for industrial equipment. Equipment located at customers throughout the world can be monitored and maintained by manufacturers and service providers, but so far industry uptake has been slow. The contributions of this study are twofold. First, it uncovers industry settings that impede the use of equipment failure data needed to train ML algorithms to predict failures and use these predictions to trigger maintenance. These empirical settings, drawn from four global machine equipment manufacturers, include either under- or over-maintenance (i.e., either too much or too little periodic maintenance). Second, formal analysis of a system dynamics model based on these empirical settings reveals a sweet spot of industry settings in which such inhibitors are absent. Companies that fall outside this sweet spot need to follow specific transition paths to reach it. This research discusses these paths, from both a research and practice perspective. Condition-based maintenance (CBM)-driven smart services have become technically much more feasible and affordable through the fast rise of Industry 4.0 technologies, such as smart sensoring, internet of things, and machine learning (ML), and yet such smart services have failed to keep pace with this rise. A key CBM-specific complication for service growth is that, in order to reach high-quality performance of such smart services, the ML-algorithms that drive them need significant numbers of equipment failures to learn from. Such failure data may be hard to obtain for OEMs, either because certain components fail to often (and hence are replaced, making the failure data obsolete) or too rarely (making the time needed to collect failure data very long). Also, customers may be very much reliability focused (leading to much preventive maintenance and so few failures) or not sufficiently reliability focused (leading to much unmonitored corrective maintenance and low interest in advanced services such as CBM)."

    University of Milano Bicocca Reports Findings in Machine Learning (An integrated computational pipeline for machine learning-driven diagnosis based on Raman spectra of saliva samples)

    86-87页
    查看更多>>摘要:New research on Machine Learning is the subject of a report. According to news reporting out of Milan, Italy, by NewsRx editors, research stated, "Raman Spectroscopy promises the ability to encode in spectral data the significant differences between biological samples belonging to patients affected by a disease and samples of healthy patients (controls). However, the decoding and interpretation of the Raman spectral fingerprint is still a difficult and time-consuming procedure even for domain experts." Our news journalists obtained a quote from the research from the University of Milano Bicocca, "In this work, we test an end-to-end deep-learning diagnostic pipeline able to classify spectral data from saliva samples. The pipeline has been validated against the SARS-COV-2 Infection and for the screening of neurodegenerative diseases such as Parkinson's and Alzheimer's diseases." According to the news editors, the research concluded: "The proposed system can be used for the fast prototyping of promising non-invasive, cost and time-efficient diagnostic screening tests." This research has been peer-reviewed.