10 results on '"Roger H. French"'
Search Results
2. Automated pipeline framework for processing of large-scale building energy time series data
- Author
-
Shreyas Kamath, Rojiar Haddadian, Roger H. French, Arash Khalilnejad, Alexis R. Abramson, and Ahmad Maroof Karimi
- Subjects
Job scheduler ,Atmospheric Science ,Economics ,Physiology ,Computer science ,Datasets as Topic ,Social Sciences ,computer.software_genre ,Mathematical and Statistical Techniques ,Electricity ,Cluster Analysis ,Data Management ,education.field_of_study ,Data Processing ,Multidisciplinary ,Database ,Ingestion ,Commerce ,Data warehouse ,Physical Sciences ,Medicine ,Research Article ,Employment ,Computer and Information Sciences ,Science ,Population ,Jobs ,Research and Analysis Methods ,Skewness ,Heating ,Meteorology ,Data Warehousing ,Computational Techniques ,HVAC ,Air Conditioning ,Hierarchical Clustering ,education ,Weather ,Metadata ,business.industry ,Computational Pipelines ,Biology and Life Sciences ,Probability Theory ,Probability Distribution ,Pipeline (software) ,United States ,Analytics ,Labor Economics ,Data quality ,Housing ,Earth Sciences ,Physiological Processes ,business ,computer ,Mathematics - Abstract
Commercial buildings account for one third of the total electricity consumption in the United States and a significant amount of this energy is wasted. Therefore, there is a need for “virtual” energy audits, to identify energy inefficiencies and their associated savings opportunities using methods that can be non-intrusive and automated for application to large populations of buildings. Here we demonstrate virtual energy audits applied to large populations of buildings’ time-series smart-meter data using a systematic approach and a fully automated Building Energy Analytics (BEA) Pipeline that unifies, cleans, stores and analyzes building energy datasets in a non-relational data warehouse for efficient insights and results. This BEA pipeline is based on a custom compute job scheduler for a high performance computing cluster to enable parallel processing of Slurm jobs. Within the analytics pipeline, we introduced a data qualification tool that enhances data quality by fixing common errors, while also detecting abnormalities in a building’s daily operation using hierarchical clustering. We analyze the HVAC scheduling of a population of 816 buildings, using this analytics pipeline, as part of a cross-sectional study. With our approach, this sample of 816 buildings is improved in data quality and is efficiently analyzed in 34 minutes, which is 85 times faster than the time taken by a sequential processing. The analytical results for the HVAC operational hours of these buildings show that among 10 building use types, food sales buildings with 17.75 hours of daily HVAC cooling operation are decent targets for HVAC savings. Overall, this analytics pipeline enables the identification of statistically significant results from population based studies of large numbers of building energy time-series datasets with robust results. These types of BEA studies can explore numerous factors impacting building energy efficiency and virtual building energy audits. This approach enables a new generation of data-driven buildings energy analysis at scale.
- Published
- 2020
3. Temporal evolution and pathway models of poly(ethylene-terephthalate) degradation under multi-factor accelerated weathering exposures
- Author
-
Roger H. French, Abdulkerim Gok, Cara L. Fagerholm, and Laura S. Bruckman
- Subjects
Atmospheric Science ,Light ,Polymers ,02 engineering and technology ,Photochemistry ,law.invention ,chemistry.chemical_compound ,Spectrum Analysis Techniques ,law ,Chemical Precipitation ,Crystallization ,Materials ,chemistry.chemical_classification ,Multidisciplinary ,Crystallography ,Polyethylene Terephthalates ,Physics ,Electromagnetic Radiation ,Chemical Reactions ,Polymer ,021001 nanoscience & nanotechnology ,Condensed Matter Physics ,Chemistry ,0205 materials engineering ,Macromolecules ,Physical Sciences ,Sunlight ,Medicine ,Bleaching ,Solar Radiation ,0210 nano-technology ,Network Analysis ,Research Article ,Computer and Information Sciences ,Ultraviolet Rays ,Science ,Materials Science ,Infrared spectroscopy ,Research and Analysis Methods ,Hydrolysis ,Meteorology ,Solid State Physics ,020502 materials ,Humidity ,Chromophore ,Polymer Chemistry ,chemistry ,Models, Chemical ,Earth Sciences ,Degradation (geology) ,Ultraviolet-Visible Spectroscopy ,Ethylene glycol ,Stabilizer (chemistry) - Abstract
Photolytic and hydrolytic degradation of poly(ethylene-terephthalate) (PET) polymers with different stabilizers were performed under multiple accelerated weathering exposures and changes in the polymers were monitored by various evaluation techniques. Yellowing was caused by photolytic degradation and haze formation was induced by combined effects of photolytic and hydrolytic degradation. The formation of light absorbing chromophores and bleaching of the UV stabilizer additive were recorded through optical spectroscopy. Chain scission and crystallization were found to be common mechanisms under both photolytic and hydrolytic conditions, based on the infrared absorption of the carbonyl (C = O) band and the trans ethylene glycol unit, respectively. The degradation mechanisms determined from these evaluations were then used to construct a set of degradation pathway network models using the network structural equation modeling (netSEM) approach. This method captured the temporal evolution of degradation by assessing statistically significant relationships between applied stressors, mechanistic variables, and performance level responses. Quantitative pathway equations provided the contributions from mechanistic variables to the response changes.
- Published
- 2019
4. Multivariate multiple regression models of poly(ethylene-terephthalate) film degradation under outdoor and multi-stressor accelerated weathering exposures
- Author
-
Devin A. Gordon, Laura S. Bruckman, Roger H. French, Wei-Heng Huang, and David M. Burns
- Subjects
Atmospheric Science ,Multivariate statistics ,Light ,Polymers ,02 engineering and technology ,01 natural sciences ,7. Clean energy ,Random Allocation ,010104 statistics & probability ,Materials Testing ,Longitudinal Studies ,Materials ,Multidisciplinary ,Moisture ,Optical Materials ,Polyethylene Terephthalates ,Hydrolysis ,Physics ,Chemical Reactions ,Regression analysis ,Activation Energy ,021001 nanoscience & nanotechnology ,Chemistry ,Macromolecules ,Physical Sciences ,Regression Analysis ,Medicine ,0210 nano-technology ,Research Article ,Ultraviolet radiation ,Amorphous Solids ,Science ,Materials Science ,Soil science ,Weathering ,Cross-validation ,Meteorology ,Electromagnetic radiation ,Linear regression ,0101 mathematics ,Weather ,Photolysis ,Humidity ,Models, Theoretical ,Polymer Chemistry ,Gloss (optics) ,13. Climate action ,Multivariate Analysis ,Earth Sciences ,Glass ,Ultraviolet A - Abstract
Developing materials for use in photovoltaic (PV) systems requires knowledge of their performance over the warranted lifetime of the PV system. Poly(ethylene-terephthalate) (PET) is a critical component of PV module backsheets due to its dielectric properties and low cost. However, PET is susceptible to environmental stressors and degrades over time. Changes in the physical properties of nine PET grades were modeled after outdoor and accelerated weathering exposures to characterize the degradation process of PET and assess the influence of stabilizing additives and weathering factors. Multivariate multiple regression (MMR) models were developed to quantify changes in color, gloss, and haze of the materials. Natural splines were used to capture the non-linear relationship between predictors and responses. Model performance was evaluated via adjusted-R2 and root mean squared error values from leave-one-out cross validation analysis. All models described over 85% of the variation in the data with low relative error. Model coefficients were used to assess the influence of weathering stressors and material additives on the property changes of films. Photodose was found to be the primary degradation stressor and moisture was found to increase the degradation rate of PET. Direct moisture contact was found to impose more stress on the material than airbone moisture (humidity). Increasing the concentration of TiO2 was found to generally decrease the degradation rate of PET and mitigate hydrolytic degradation. MMR models were compared to physics-based models and agreement was found between the two modeling approaches. Cross-correlation of accelerated exposures to outdoor exposures was achieved via determination of cross-correlation scale factors. Cross-correlation revealed that direct moisture contact is a key factor for reliable accelerated weathering testing and provided a quantitative method to determine when accelerated exposure results can be made more aggressive to better approximate outdoor exposure conditions.
- Published
- 2018
5. Microinverter Thermal Performance in the Real-World: Measurements and Modeling
- Author
-
Roger H. French, Liang Ji, Yifan Xu, Timothy J. Peshek, Alexis R. Abramson, and Mohammad A. Hossain
- Subjects
Hot Temperature ,Time Factors ,Irradiance ,lcsh:Medicine ,7. Clean energy ,Automotive engineering ,Solar micro-inverter ,Reliability (semiconductor) ,Electric Power Supplies ,Solar Energy ,lcsh:Science ,Multidisciplinary ,Wind power ,business.industry ,Photovoltaic system ,lcsh:R ,Temperature ,Equipment Design ,AC power ,Models, Theoretical ,Solar energy ,Power (physics) ,13. Climate action ,Sunlight ,Environmental science ,Regression Analysis ,lcsh:Q ,business ,Research Article - Abstract
Real-world performance, durability and reliability of microinverters are critical concerns for microinverter-equipped photovoltaic systems. We conducted a data-driven study of the thermal performance of 24 new microinverters (Enphase M215) connected to 8 different brands of PV modules on dual-axis trackers at the Solar Durability and Lifetime Extension (SDLE) SunFarm at Case Western Reserve University, based on minute by minute power and thermal data from the microinverters and PV modules along with insolation and environmental data from July through October 2013. The analysis shows the strengths of the associations of microinverter temperature with ambient temperature, PV module temperature, irradiance and AC power of the PV systems. The importance of the covariates are rank ordered. A multiple regression model was developed and tested based on stable solar noon-time data, which gives both an overall function that predicts the temperature of microinverters under typical local conditions, and coefficients adjustments reecting refined prediction of the microinverter temperature connected to the 8 brands of PV modules in the study. The model allows for prediction of internal temperature for the Enphase M215 given similar climatic condition and can be expanded to predict microinverter temperature in fixed-rack and roof-top PV systems. This study is foundational in that similar models built on later stage data in the life of a device could reveal potential influencing factors in performance degradation.
- Published
- 2015
6. A cross-sectional study of the temporal evolution of electricity consumption of six commercial buildings
- Author
-
Ethan Pickering, Alexis R. Abramson, Mohammad A. Hossain, Jack P. Mousseau, Roger H. French, and Rachel A. Swanson
- Subjects
Atmospheric Science ,Computer and Information Sciences ,Computer science ,020209 energy ,Population ,lcsh:Medicine ,Equipment ,02 engineering and technology ,Research and Analysis Methods ,Meteorology ,Electricity ,HVAC ,Statistics ,0202 electrical engineering, electronic engineering, information engineering ,Thermal mass ,lcsh:Science ,education ,Weather ,Chemical Characterization ,Statistical Data ,education.field_of_study ,Multidisciplinary ,business.industry ,Physics ,Data Visualization ,lcsh:R ,Temperature Analysis ,Energy conservation ,Data Acquisition ,Base load power plant ,Energy intensity ,Physical Sciences ,Earth Sciences ,Plug load ,Engineering and Technology ,lcsh:Q ,Seasons ,business ,Mathematics ,Statistics (Mathematics) ,Research Article - Abstract
Current approaches to building efficiency diagnoses include conventional energy audit techniques that can be expensive and time consuming. In contrast, virtual energy audits of readily available 15-minute-interval building electricity consumption are being explored to provide quick, inexpensive, and useful insights into building operation characteristics. A cross sectional analysis of six buildings in two different climate zones provides methods for data cleaning, population-based building comparisons, and relationships (correlations) of weather and electricity consumption. Data cleaning methods have been developed to categorize and appropriately filter or correct anomalous data including outliers, missing data, and erroneous values (resulting in < 0.5% anomalies). The utility of a cross-sectional analysis of a sample set of building's electricity consumption is found through comparisons of baseload, daily consumption variance, and energy use intensity. Correlations of weather and electricity consumption 15-minute interval datasets show important relationships for the heating and cooling seasons using computed correlations of a Time-Specific-Averaged-Ordered Variable (exterior temperature) and corresponding averaged variables (electricity consumption)(TSAOV method). The TSAOV method is unique as it introduces time of day as a third variable while also minimizing randomness in both correlated variables through averaging. This study found that many of the pair-wise linear correlation analyses lacked strong relationships, prompting the development of the new TSAOV method to uncover the causal relationship between electricity and weather. We conclude that a combination of varied HVAC system operations, building thermal mass, plug load use, and building set point temperatures are likely responsible for the poor correlations in the prior studies, while the correlation of time-specific-averaged-ordered temperature and corresponding averaged variables method developed herein adequately accounts for these issues and enables discovery of strong linear pair-wise correlation R values. TSAOV correlations lay the foundation for a new approach to building studies, that mitigates plug load interferences and identifies more accurate insights into weather-energy relationship for all building types. Over all six buildings analyzed the TSAOV method reported very significant average correlations per building of 0.94 to 0.82 in magnitude. Our rigorous statistics-based methods applied to 15-minute-interval electricity data further enables virtual energy audits of buildings to quickly and inexpensively inform energy savings measures.
- Published
- 2017
- Full Text
- View/download PDF
7. Predictive models of poly(ethylene-terephthalate) film degradation under multi-factor accelerated weathering exposures
- Author
-
Roger H. French, Jiayang Sun, David Ngendahimana, Abdulkerim Gok, Cara L. Fagerholm, and Laura S. Bruckman
- Subjects
Atmospheric Science ,Haze ,Light ,Polymers ,Normal Distribution ,lcsh:Medicine ,02 engineering and technology ,Residual ,Physical Chemistry ,01 natural sciences ,Scattering ,Mathematical and Statistical Techniques ,lcsh:Science ,Poly ethylene ,Multidisciplinary ,Polyethylene Terephthalates ,Physics ,Electromagnetic Radiation ,Hydrolysis ,Chemical Reactions ,Chromophores ,021001 nanoscience & nanotechnology ,Chemistry ,Macromolecules ,Physical Sciences ,0210 nano-technology ,Biological system ,Statistics (Mathematics) ,Research Article ,Materials science ,Ultraviolet Rays ,Materials by Structure ,Mean squared prediction error ,Materials Science ,Weathering ,Research and Analysis Methods ,010402 general chemistry ,Meteorology ,Ultraviolet Radiation ,Statistical Methods ,Homogeneity (statistics) ,lcsh:R ,Light Scattering ,Humidity ,Membranes, Artificial ,Models, Theoretical ,Polymer Chemistry ,Probability Theory ,Probability Distribution ,0104 chemical sciences ,Earth Sciences ,Degradation (geology) ,lcsh:Q ,sense organs ,Mathematics ,Forecasting - Abstract
Accelerated weathering exposures were performed on poly(ethylene-terephthalate) (PET) films. Longitudinal multi-level predictive models as a function of PET grades and exposure types were developed for the change in yellowness index (YI) and haze (%). Exposures with similar change in YI were modeled using a linear fixed-effects modeling approach. Due to the complex nature of haze formation, measurement uncertainty, and the differences in the samples' responses, the change in haze (%) depended on individual samples' responses and a linear mixed-effects modeling approach was used. When compared to fixed-effects models, the addition of random effects in the haze formation models significantly increased the variance explained. For both modeling approaches, diagnostic plots confirmed independence and homogeneity with normally distributed residual errors. Predictive R2 values for true prediction error and predictive power of the models demonstrated that the models were not subject to over-fitting. These models enable prediction under pre-defined exposure conditions for a given exposure time (or photo-dosage in case of UV light exposure). PET degradation under cyclic exposures combining UV light and condensing humidity is caused by photolytic and hydrolytic mechanisms causing yellowing and haze formation. Quantitative knowledge of these degradation pathways enable cross-correlation of these lab-based exposures with real-world conditions for service life prediction.
- Published
- 2017
- Full Text
- View/download PDF
8. Automated pipeline framework for processing of large-scale building energy time series data.
- Author
-
Arash Khalilnejad, Ahmad M Karimi, Shreyas Kamath, Rojiar Haddadian, Roger H French, and Alexis R Abramson
- Subjects
Medicine ,Science - Abstract
Commercial buildings account for one third of the total electricity consumption in the United States and a significant amount of this energy is wasted. Therefore, there is a need for "virtual" energy audits, to identify energy inefficiencies and their associated savings opportunities using methods that can be non-intrusive and automated for application to large populations of buildings. Here we demonstrate virtual energy audits applied to large populations of buildings' time-series smart-meter data using a systematic approach and a fully automated Building Energy Analytics (BEA) Pipeline that unifies, cleans, stores and analyzes building energy datasets in a non-relational data warehouse for efficient insights and results. This BEA pipeline is based on a custom compute job scheduler for a high performance computing cluster to enable parallel processing of Slurm jobs. Within the analytics pipeline, we introduced a data qualification tool that enhances data quality by fixing common errors, while also detecting abnormalities in a building's daily operation using hierarchical clustering. We analyze the HVAC scheduling of a population of 816 buildings, using this analytics pipeline, as part of a cross-sectional study. With our approach, this sample of 816 buildings is improved in data quality and is efficiently analyzed in 34 minutes, which is 85 times faster than the time taken by a sequential processing. The analytical results for the HVAC operational hours of these buildings show that among 10 building use types, food sales buildings with 17.75 hours of daily HVAC cooling operation are decent targets for HVAC savings. Overall, this analytics pipeline enables the identification of statistically significant results from population based studies of large numbers of building energy time-series datasets with robust results. These types of BEA studies can explore numerous factors impacting building energy efficiency and virtual building energy audits. This approach enables a new generation of data-driven buildings energy analysis at scale.
- Published
- 2020
- Full Text
- View/download PDF
9. Temporal evolution and pathway models of poly(ethylene-terephthalate) degradation under multi-factor accelerated weathering exposures.
- Author
-
Abdulkerim Gok, Cara L Fagerholm, Roger H French, and Laura S Bruckman
- Subjects
Medicine ,Science - Abstract
Photolytic and hydrolytic degradation of poly(ethylene-terephthalate) (PET) polymers with different stabilizers were performed under multiple accelerated weathering exposures and changes in the polymers were monitored by various evaluation techniques. Yellowing was caused by photolytic degradation and haze formation was induced by combined effects of photolytic and hydrolytic degradation. The formation of light absorbing chromophores and bleaching of the UV stabilizer additive were recorded through optical spectroscopy. Chain scission and crystallization were found to be common mechanisms under both photolytic and hydrolytic conditions, based on the infrared absorption of the carbonyl (C = O) band and the trans ethylene glycol unit, respectively. The degradation mechanisms determined from these evaluations were then used to construct a set of degradation pathway network models using the network structural equation modeling (netSEM) approach. This method captured the temporal evolution of degradation by assessing statistically significant relationships between applied stressors, mechanistic variables, and performance level responses. Quantitative pathway equations provided the contributions from mechanistic variables to the response changes.
- Published
- 2019
- Full Text
- View/download PDF
10. Microinverter Thermal Performance in the Real-World: Measurements and Modeling.
- Author
-
Mohammad Akram Hossain, Yifan Xu, Timothy J Peshek, Liang Ji, Alexis R Abramson, and Roger H French
- Subjects
Medicine ,Science - Abstract
Real-world performance, durability and reliability of microinverters are critical concerns for microinverter-equipped photovoltaic systems. We conducted a data-driven study of the thermal performance of 24 new microinverters (Enphase M215) connected to 8 different brands of PV modules on dual-axis trackers at the Solar Durability and Lifetime Extension (SDLE) SunFarm at Case Western Reserve University, based on minute by minute power and thermal data from the microinverters and PV modules along with insolation and environmental data from July through October 2013. The analysis shows the strengths of the associations of microinverter temperature with ambient temperature, PV module temperature, irradiance and AC power of the PV systems. The importance of the covariates are rank ordered. A multiple regression model was developed and tested based on stable solar noon-time data, which gives both an overall function that predicts the temperature of microinverters under typical local conditions, and coefficients adjustments reecting refined prediction of the microinverter temperature connected to the 8 brands of PV modules in the study. The model allows for prediction of internal temperature for the Enphase M215 given similar climatic condition and can be expanded to predict microinverter temperature in fixed-rack and roof-top PV systems. This study is foundational in that similar models built on later stage data in the life of a device could reveal potential influencing factors in performance degradation.
- Published
- 2015
- Full Text
- View/download PDF
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