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Probabilistic Assessment of Design Error Costs
Love, Peter E. D.,Lopez, Robert,Kim, Jeong Tai,Kim, Mi Jeong American Society of Civil Engineers 2014 Journal of performance of constructed facilities Vol.28 No.3
The statistical characteristics of design error rectification costs experienced in 139 Australian construction projects are analyzed. Theoretical probability distributions are fitted to the design error cost data. A generalized Pareto probability function was found to provide the best overall distribution fit for design error costs. The generalized Pareto distribution is used to calculate the probability of design error costs being experienced for the selected sample. A mean design error cost of 14.2% of a project's contract value is reported. A significant difference between mean design error costs and project types was found for civil engineering (23.44%) and fit-out (22.50%) projects. Projects >Australian dollars (A$)101M were found to experience significantly higher mean design error costs (26.18%) than other projects. Being able to determine the likelihood of design error rectification costs from the derived empirical probability distribution will provide an ameliorated assessment of risk before the commencement of construction. Strategies to reduce design error rectification costs are also discussed.
Love, J.S.,Morava, B. Council on Tall Building and Urban Habitat Korea 2021 International journal of high-rise buildings Vol.10 No.2
Dynamic vibration absorbers (DVAs) in the form of tuned sloshing dampers (TSDs) and tuned mass dampers (TMDs) are commonly used to reduce the wind-induced motion of high-rise buildings. Full-scale performance of structure-DVA systems must be evaluated during the DVA commissioning process using structural monitoring data. While the random decrement technique (RDT) is sometimes employed to evaluate the DVA performance, it is shown to have no theoretical justification for application to structure-DVA systems, and to produce erroneous results. Subsequently, several practical methods with a sound theoretical basis are presented and illustrated using simulated and real-world data. By monitoring the responses of the structure and DVA simultaneously, it is possible to directly measure the effective damping of the system or perform system identification from which the DVA performance can be evaluated.
Applied Computational Tools for Crop Genome Research
Love Christopher G,Batley Jacqueline,Edwards David The Korean Society of Plant Biotechnology 2003 Plant molecular biology and biotechnology research Vol.5 No.4
A major goal of agricultural biotechnology is the discovery of genes or genetic loci which are associated with characteristics beneficial to crop production. This knowledge of genetic loci may then be applied to improve crop breeding. Agriculturally important genes may also benefit crop production through transgenic technologies. Recent years have seen an application of high throughput technologies to agricultural biotechnology leading to the production of large amounts of genomic data. The challenge today is the effective structuring of this data to permit researchers to search, filter and importantly, make robust associations within a wide variety of datasets. At the Plant Biotechnology Centre, Primary Industries Research Victoria in Melbourne, Australia, we have developed a series of tools and computational pipelines to assist in the processing and structuring of genomic data to aid its application to agricultural biotechnology resear-ch. These tools include a sequence database, ASTRA, for the processing and annotation of expressed sequence tag data. Tools have also been developed for the discovery of simple sequence repeat (SSR) and single nucleotide polymorphism (SNP) molecular markers from large sequence datasets. Application of these tools to Brassica research has assisted in the production of genetic and comparative physical maps as well as candidate gene discovery for a range of agronomically important traits.
Design of double dynamic vibration absorbers for reduction of two DOF vibration system
Lovely Son,Mulyadi Bur,Meifal Rusli,Adriyan 국제구조공학회 2016 Structural Engineering and Mechanics, An Int'l Jou Vol.57 No.1
This research is aimed to design and analyze the performance of double dynamic vibration absorber (DVA) using a pendulum and a spring-mass type absorber for reducing vibration of two-DOF vibration system. The conventional fixed-points method and genetics algorithm (GA) optimization procedure are utilized in designing the optimal parameter of DVA. The frequency and damping ratio are optimized to determine the optimal absorber parameters. The simulation results show that GA optimization procedure is more effective in designing the double DVA in comparison to the fixed-points method. The experimental study is conducted to verify the numerical result.
Love Allen Chijioke Ahakonye,Cosmas Ifeanyi Nwakanma,Jae Min Lee,Dong-Seong Kim 한국통신학회 2021 한국통신학회 학술대회논문집 Vol.2021 No.11
A dependable Smart Factory (SF) Supervisory Control and Data Acquisition (SCADA) network consolidates the security features of Artificial Intelligence (AI) and Information Technology (IT) trustworthiness by exploiting Machine Learning (ML) capabilities in attack detection. This study proposes to improve the efficiency of the SF SCADA network through a reliable ML detection technique. Specifically, Hyperparameter optimization of trees was lead for various optimizers for improving ML reliability. The Grid Search Optimizer improved the model by the combined advantage of training time and prediction speed. Hence, reliable for the improvement of ML in SF SCADA attack detection.
( Love Kumar Dhandole ),( Mahadik Mahadeo Abasaheb ),김수경,조민,류정호,장점석 한국공업화학회 2016 한국공업화학회 연구논문 초록집 Vol.2016 No.1
Transition metal oxides loaded acid treated TiO<sub>2</sub> nanorods (NRs) were successfully prepared by chemical treatment and wet impregnation methods. The catalysts were characterized by XRD, TEM, XPS, FT-IR and UV-DRS. The photocatalytic activities of as-prepared, acid treated, metal oxide loaded and metal oxide loaded acid treated NRs were compared and dye degradation efficiency were determined from kinetics of the degradation of Orange (II) dye. Cobalt oxide 1w% loaded on 1.0 M acid treated TiO<sub>2</sub> NRs exhibited the higher photocatalytic Orange (II) degradation efficiency 98.57% (within 120 min) than as-prepared and metal oxide loaded samples. The synergistic effect of cobalt oxide on acid treated TiO<sub>2</sub> NRs over dye degradation is considered as fine dispersion of metal oxides on the OH rich surface of TiO<sub>2</sub>. The mechanism of enhanced photocatalytic activity and photoelectrochemical analysis of photocatalyst also studied. <sup>**</sup>This work was supported by the BK21 plus program.
Anomaly Detection of Malicious Energy Usage in Smart Factories using Deep Neural Network
Love Allen Chijioke Ahakonye,Cosmas Ifeanyi Nwakanma,Jae Min Lee,Dong-Seong Kim 한국통신학회 2021 한국통신학회 학술대회논문집 Vol.2021 No.6
In Smart Factory, an extensive volume of data is generated daily by Advanced Metering Infrastructures (AMI) and Smart Sensors. One such data is the amount of energy usage and the need to keep track of normal and abnormal energy usage in the smart factory. This allows energy producers to uncover abnormal power consumption as well as realizing distinct malicious energy usage. Recognition of abnormal conducts is essential to predict the unusual occurrence and to enhance energy productivity. This work proposes the Long Short-Term Memory (LSTM) Network to accurately recognize malicious energy usage in a smart factory. The proposed system is implemented using Python on Google collaborate with Tanh activation function. The performance of the proposed scheme showed 99.92%, 99.98%, 99.92%, and 99.85% for accuracy, precision, F1-Score, and recall respectively.