Latest Past Events

MULTISCALE MANUFACTURING-INSPECTION AND FAILURE ANALYSIS METHODS FOR ELECTRONICS

Advanced MicroAnalytical 50A Northwestern Drive, Salem

Boston SMTA/IMAPS/IEEE Boston/New Hampshire/Providence Reliability Chapter Event: "MULTISCALE MANUFACTURING-INSPECTION AND FAILURE ANALYSIS METHODS FOR ELECTRONICS" Overview: This meeting will cover laboratory techniques and test methods for a variety of samples from components to PCBA’s and whole commercial devices. A number of familiar analytical techniques will be discussed and demonstrated related to reliability and process inspection, including visual inspection and standard techniques like Ball Shear, X-ray Imaging, CSAM and other standard composite methods. Additionally, more specialized approaches to Failure Analysis, research, and process development will be demonstrated including use of multiple types of electron microscopes, spectroscopy, and Focused Ion Beam analysis for 3D examination of devices on a nano-scale. Advanced MicroAnalytical is part of the EMSL Analytical network. Coming up on 10 years this May, Advanced MicroAnalytical has been delivering in-depth scientific support for a wide range of industries and sample types. Our staff and analytical capabilities are primed to provide leading edge support for industries including, including manufacturing, microelectronics, nano-fabrication, aerospace and defense, medical devices and more. This meeting will demonstrate the type of work flow associated with finding and understanding problems that challenge attending members – from initial product development choices, through reliability, product support, and customer facing FA efforts. Advanced MicroAnalytical is located in the hub of technology on the East Coast just north of Boston, MA, in Salem NH. Cost: Members: $25 Non-members: $30 Students/Retired: $10 ***IEEE and iMAPs Members please contact Mike Jansen [email protected] to receive promo code for discounted rate*** If you are not an SMTA member, you may click "Continue as Guest" on the registration page. Date and Time Date: 23 Apr 2024 Time: 05:30 PM to 09:00 PM All times are (GMT-05:00) US/Eastern Location Advanced MicroAnalytical 50A Northwestern Drive Salem, New Hampshire United States 03079 Building: Unit #4 Hosts Boston SMTA, iMAPS, & IEEE Boston/Providence/New Hampshire Jt Sections,RL07 Contact Event Host Mike Jansen 978-987-3716 Registration Link to SMTA Registration Speakers Jared Kelly - Advanced MicroAnalytical Hal Winslow - Symbotic Chuck Lemieux - Advanced MicroAnalytical Agenda 5:30 PM - Registration 6:00 PM - Dinner 6:30 PM - Presentation 7:30 PM - Tour 9:00 PM - Adjourn

Newsletter

2024_Mar-Boston_Reliability_Newsletter

HYBRID – REGRESSION AND TIME SERIES MIXTURE APPROACHES TO PREDICT RESILIENCE 

HYBRID - REGRESSION AND TIME SERIES MIXTURE APPROACHES TO PREDICT RESILIENCE   Sponsor:  IEEE Boston/Providence/New Hampshire Reliability Chapter Please visit https://r1.ieee.org/boston-rl/ Host: IEEE Boston/Providence/New Hampshire Reliability Chapter FREE In Person & Virtual Event Abstract Resilience engineering is the ability to build and sustain a system that can deal effectively with disruptive events. Previous resilience engineering research focuses on metrics to quantify resilience and models to characterize system performance. However, resilience metrics are normally computed after disruptions have occurred and existing models lack the ability to predict one or more shocks and subsequent recoveries. To address these limitations, this talk presents three alternative approaches to model system resilience with statistical techniques based on (i) regression, (ii) time series, and (iii) a combination of regression and time series to track and predict how system performance will change when exposed to multiple shocks and stresses of different intensity and duration, provide structure for planning tests to assess system resilience against particular shocks and stresses and guide data collection necessary to conduct tests effectively. These modeling approaches are general and can be applied to systems and processes in multiple domains. A historical data set on job losses during the 1980 recessions in the United States is used to assess the predictive accuracy of these approaches. Goodness-of-fit measures and confidence intervals are computed and interval-based and point-based resilience metrics are predicted to assess how well the models perform on the data set considered. The results suggest that resilience models based on statistical methods such as multiple linear regression and multivariate time series models are capable of modeling and predicting resilience curves exhibiting multiple shocks and subsequent recoveries. However, models that combine regression and time series account for changes in performance due to current and time-delayed effects from disruptions most effectively, demonstrating superior performance in long-term predictions and higher goodness-of-fit despite increased parametric complexity. Date and Time   Date: 06 March 2024 Time: 5:30 PM to 7:00 PM All times are (UTC-05:00) Eastern Time (US & Canada)   Location   This Meeting is to be delivered virtually and in person In person: Lincoln Laboratory 244 Wood St Lexington, Massachusetts United States 02421 Building: Main Cafeteria NOTE: If attending in-person, you must present a photo ID at the gate.  Please indicate in the registration if you will be attending in person so that we may plan for food and refreshments. At registration, you must provide a valid e-mail address to receive the Webinar Session link approximately 15 hours before the event.  The link will only be sent to the e-mail address entered with your registration.  Please double-check for spelling errors.  If you haven't received the e-mail as scheduled, please check your spam folder and alternate e-mail accounts before contacting the host. Contact ·   Email Event Contact ·    James P. Yakura, Chair ·    IEEE Boston/Providence/New Hampshire Reliability Chapter Registration ·    No Admission Charge ·    Register Speaker Priscila Silva is a Ph.D. candidate in Electrical and Computer Engineering at the University of Massachusetts Dartmouth (UMassD). She received her MS degree in Computer Engineering from UMassD in 2022, and her BS degree in Electrical Engineering from Federal University of Ouro Preto (UFOP) in 2017, In Brazil. She works under the supervision of Dr. Lance Fiondella in the dependable software and system lab at UMassD, where they have projects supported by the United States Military Academy West Point, Air Force, and NSF. She has published three (3) peer-reviewed first-author conference papers with an additional four (4) first-author journal articles under review or in preparation. She is co-author of six (6) additional published conference papers, with another three (3) journal articles under review. Her very first peer-reviewed paper on which she served as the first author was published in the proceedings of the 2022 Annual Symposium on Reliability and Maintainability (RAMS), receiving Second Place in the Thomas L. Fagan Jr., RAMS Student Paper Award Competition. Her research interests include system reliability and resilience engineering for performance evaluation, including computer, cyber-physical, infrastructure, finance, and environment domains. For her Ph.D. dissertation, she has been working on statistical modeling techniques to predict system recovery time after disruptive events, which will enable test planning and assessment to support emergency management teams to optimally allocate resources to restorative activities. 5:30 PM     Light repast and Networking 6:00  PM   Technical Presentation 6:45 PM    Questions and Answers 7:00 PM    Adjournment The meeting is open to all.  You do not need to belong to the IEEE to attend this event; however, we welcome your consideration of IEEE membership as a career enhancing technical affiliation. There is no cost to register or attend, but registration is required. Register