Dye removal by Adsorption using waste biomass: Sugarcane Bagasse
Journal Title: International journal of Emerging Trends in Science and Technology - Year 2014, Vol 1, Issue 5
Abstract
Dye removal from industrial effluents is an important environmental concern. Various physical and chemical treatment methods can serve this purpose, of which the most economical and effective one is adsorption. A variety of adsorbents are available naturally- rice husk, neem bark, clays etc. that can be used to remove dye from the discharged waste. In this study, adsorption efficiency of low cost adsorbent Sugarcane Bagasse is examined. The effect of different parameters like contact time, adsorbent dosage, initial concentration of dye, pH on the adsorption rate. The data perfectly fits Freundlich isotherm with second order kinetics.
Authors and Affiliations
Madhura Chincholi
Defect Analysis & Reduction in Rejection on “Governor Support”
Currently the assembly of engine are performed by manually. During assembly of governor support O-ring cut due to improper fitment. In this project we provide additional ring which acts as seal. This seal avoid the leaka...
Compressed Data Transfer from Mobile-To- Mobile Using Wi-Fi
This paper proposes a project with an aim to achieve Compressed File Sharing, between two Users with fast transfer of data. The data includes documents, image, audio and video. The connectivity is done using Wi-Fi direct...
Speech Parameters Characterization Using Data Mining Techniques
- Speech has many parameters such as pitch, energy, Noise, Change in speaking rate, Change in articulation. Speech is also of two type i.e. voiced speech and unvoiced speech. Voiced speech has high frequency as compared...
Comparing AODV and CAODV Routing Protocols
Wireless Sensor Networks (WSNs) consist of large number of sensing nodes that organize themselves into multi-hop wireless networks. It is desirable for communication protocols to minimize the communication overhead and h...
Application of Contourlet Transform in Brain Tumor Classification
In this paper, contourlet transformation has been used for Brain Tumor classification along with Probabilistic neural network. The other methods like wavelet and support vector machine based classification resulted in a...