J. Durgaprasad
Sharda University
8 Papers
33 Citations
J. Durgaprasad is an academic researcher from Sharda University. The author has contributed to research in topics: Knowledge-based systems & Knowledge acquisition. The author has an hindex of 5, co-authored 8 publications. Previous affiliations of J. Durgaprasad include Structural Engineering Research Centre.
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Papers
Effect of silica fume on the mechanical properties of fly ash based-geopolymer concrete
TL;DR: In this paper, fly ash based geopolymer concretes with different percentages of silica fume were made by using NaOH/sodium silicate and cured in an oven at 100°C.
294
Mechanical properties of alkali activated flyash/Kaolin based geopolymer concrete
TL;DR: In this article, the effect of temperature, sodium and potassium hydroxides and different superplasticizers on compressive strength was studied and the results have shown that the compressive strengths increased with increasing temperature, curing time and type of alkali activators.
166
Knowledge-based expert system for damage assessment and vulnerability analysis of structures subjected to cyclones
TL;DR: The knowledge-based system developed for damage assessment and vulnerability analysis of structures subjected to cyclones and that acquired through feedback to questionnaires from experts/engineers forms a part of the knowledge basis.
17
Parameter Interdependencies for Development of KBS for Risk Analysis
TL;DR: The use of a graph theoretic technique is proposed in this paper to determine the interdependencies among various parameters useful in the creation of a KB in order to develop an effective KBS for risk analysis of structures.
8
Modeling Risk from Large-Scale Disasters by Integrating Fragmented Knowledge: Decision Tool
TL;DR: This paper uses a storehouse of expert knowledge and data available for windstorm-induced damage to roof structures to illustrate risk analysis using Bayesian networks, and proposes the use of a graph theoretical technique for processing knowledge and building Bayesian Networks in developing decision support systems.
5