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Using wastes by- product of olives to produce Environment Friendly products

استخدام مخلفات عصر الزِّيتون في الحصول على منتجات صديقة للبيئة

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 Publication date 2014
and research's language is العربية
 Created by Shamra Editor




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The research had performed in Tartous county at Alsinaea area and Faculty of Technical Engineering in year 2012 .This investigation had confirmed the possibility of quick dispose of byrene and the possibility of byrene manufacture through byrene press and producing pieces for heating or producing barbecue charcoal. This products are with little smoke, smell and environment friendly. The results showed the following: 1- Producing pieces of byrene for heating with the possibility of controlling the strength and the press of pieces. With this we can contribule to environment protection and loosen the problem of heating in winter. 2- The comparison of organic fertilizer (Compost) from Byrene with mixture fertilizer from oak, straw and cock waste showed moral differences for nitrogen and kalium and no moral differences for organic substance, ashes, phosphourus and PH. The compost contains a little of Poly Phenolic. The SHETIANZY number for compost was with cold and hot water 0.277, 8.22, respectively and for mixture fertilizer 10, 16. 3- It was no moral differences between the specific heat and heat of combustion. The less moral difference was for both 0.430, 1.054, respectively. The barbecue charcoal from Dakka was with little smoke, smell and quick combustion. The producing cost of 1 kg was 5 syrian pounds

References used
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Anas, D .; HaKeeileilei, H and ME.Ingel 1998. The uses of industrial wastes as manures, land application to olive orchard. Ege-University Faculty of Agriculture- Dergise. 1993.30 : 3,625-32; 16 ref. Turkey
Marsilio, V.; Di-Giovacchino, L.; Solinas, M.; Lombardo, N. and Bricholi, B. 1999. Observations on the dispernosal effects on the disposal effects of vegetation waters released from oil mills on cultivated soil. Acta Hortic. Wageningen: Int. Soc. For .Horti. Sei. 286 p.493-496
Schaefer , M. 1996 . Enflub der Lagerung von Fichten – und Kiefern - iIndustrierestholz auf der Profilzerspanug auf die Eigenschaften von Spanplatten und Mitteldichten Fasserplatten (MDF). Dissertation an der Georg- August-Universitat Gottingen
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