Country Waste Profile Report for Kuwait Reporting year: 2000

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1 Coutry Waste Profile Report for Kuwait Reportig year: 2000 This is a sub-doumet from the report Radioative Waste Maagemet Profiles No 4 a ompilatio of data from the Net Eabled Waste Maagemet Database, Iteratioal Atomi Eergy Agey report IAEA/WMDB/4 (2002) For guidae o readig Coutry Waste Profile Reports from report IAEA/WMDB/4, please refer to the followig iteret based doumet: For further iformatio, please otat the Resposible Offier via NEWMDB@IAEA.org 2002, Iteratioal Atomi Eergy Agey

2 Waste Class Matrix(es) Used/Defied Waste Class Matrix: IAEA Def., Used Desriptio: The Agey's stadard matrix , Iteratioal Atomi Eergy Agey. This page geerated at :14:59 (loal Viea time.)

3 Groups Overview Reportig Group: Ivetory Reportig Date: Waste Matrix Used: Desriptio: RG-KUW Deember 2000 IAEA Def. Cetral Reportig Group i Kuwait. Oe Reportig Group i the Coutry situated i the Miistry of Health. Failities Defied Site Name Proessig Storage Disposal Dediated SRS KCCC KUM KUS , Iteratioal Atomi Eergy Agey. This page geerated at :15:01 (loal Viea time.)

4 Site Struture: KCCC Full Name: Kuwait Caer Cotrol Cetre Liese Holder(s) : Mrs. Asha Jaob Tel: +(965) ext.2144 Storage Failities Name KCCC Desriptio Three areas are used for radioative waste temporary storage: The Hot Laboratory, Ward No. 2 ad the Basemet Store Types of Storage Uits Uit Name Type Operatig Status % filled Modular Life (years) CR buildig 10 ope 25 NO Ward 2 buildig 10 ope 1 NO Basemet buildig 10 ope 15 NO Dediated SRS Name Desriptio Type KCCC 1. Ra-226 eedles ad tubes 2. Cs-137 old irradiator for radiotherapy 3. Am-Be Spet Neutro soures All soures are stored temporary oly. storage , Iteratioal Atomi Eergy Agey. This page geerated at :56:49 (loal Viea time.)

5 Site Data: KCCC Full Name: Kuwait Caer Cotrol Cetre Ivetory Reportig Date: Deember 2000 Waste Matrix: IAEA Def. Waste Ivetory Distributio i % Class Loatio Pro. Volume (m3) RO FF/FE RP NA DF DC/RE LILW-SL Storage No The additioal harateristis of the waste: solid (o-dispersible) LILW-LL Storage No The additioal harateristis of the waste: solid (dispersible); solid (o-dispersible) Pro.=Is the waste proessed (Yes/No)? RO=Reator Operatios, FF/FE=Fuel Fabriatio/Fuel Erihmet, RP=Reproessig, NA=Nulear Appliatios,DF=Defee, DC/RE=Deommissioig/Remediatio Spet Soures <=30 years Nulide Cs-137 Cs-137 Number of Soures/Total Ativity of Soures (GBq) Group I less tha or equal 4GBq um./ativity E+01 Group II more tha 4GBq but less tha or equal 4E+4GBq um./ativity E+03 Group III more tha 4E+4GBq um./ativity o d u o d a t. Total Ativity for all Groups (GBq) Deay Date No Yes E No Yes E Spet Soures >30 years Nulide Number of Soures/Total Ativity of Soures (GBq) Group I less tha or equal 4GBq um./ativity Group II more tha 4GBq but less tha or equal 4E+4GBq um./ativity o d u o d a t. Total Ativity for all Groups (GBq) Deay Date Ra No Yes E E , Iteratioal Atomi Eergy Agey. This page geerated at :58:10 (loal Viea time.)

6 Site Struture: KUM Full Name: Faulty of Mediie, Uiversity of Kuwait Liese Holder(s) : Mr. Mohammed Sagr Tel: (965) Ext mohsak@yahoo.om Storage Failities Name KUM Desriptio Solutio of H-3 ad C-14 stored temporary Types of Storage Uits Uit Name Type Operatig Status % filled Modular Life (years) Laboratory buildig 10 ope 1 NO , Iteratioal Atomi Eergy Agey. This page geerated at :58:18 (loal Viea time.)

7 Site Data: KUM Full Name: Faulty of Mediie, Uiversity of Kuwait Ivetory Reportig Date: Deember 2000 Waste Matrix: IAEA Def. Waste Ivetory Distributio i % Class Loatio Pro. Volume (m3) RO FF/FE RP NA DF DC/RE LILW-SL Storage No The additioal harateristis of the waste: liquid (aqueous); liquid (orgai) LILW-LL Storage No The additioal harateristis of the waste: liquid (aqueous); liquid (orgai) Pro.=Is the waste proessed (Yes/No)? RO=Reator Operatios, FF/FE=Fuel Fabriatio/Fuel Erihmet, RP=Reproessig, NA=Nulear Appliatios,DF=Defee, DC/RE=Deommissioig/Remediatio , Iteratioal Atomi Eergy Agey. This page geerated at :59:38 (loal Viea time.)

8 Site Struture: KUS Full Name: Faulty of Siee, Uiversity of Kuwait Liese Holder(s) : Mr. Tiruvahi Nataraja Nageswara Tel: (965) Ext agesh@ku01.kuiv.edu.kw Storage Failities Name KUS Desriptio Solutio of H-3 ad C-14 stored temporary Types of Storage Uits Uit Name Type Operatig Status % filled Modular Life (years) Store buildig 2 ope 15 NO , Iteratioal Atomi Eergy Agey. This page geerated at :59:46 (loal Viea time.)

9 Site Data: KUS Full Name: Faulty of Siee, Uiversity of Kuwait Ivetory Reportig Date: Deember 2000 Waste Matrix: IAEA Def. Waste Ivetory Distributio i % Class Loatio Pro. Volume (m3) RO FF/FE RP NA DF DC/RE LILW-SL Storage No The additioal harateristis of the waste: liquid (aqueous); liquid (orgai) LILW-LL Storage No The additioal harateristis of the waste: liquid (aqueous); liquid (orgai) Pro.=Is the waste proessed (Yes/No)? RO=Reator Operatios, FF/FE=Fuel Fabriatio/Fuel Erihmet, RP=Reproessig, NA=Nulear Appliatios,DF=Defee, DC/RE=Deommissioig/Remediatio , Iteratioal Atomi Eergy Agey. This page geerated at :01:10 (loal Viea time.)

10 REGULATORS Name MOH Full Name Miister of Health Divisio City or Tow Wastes that are regulated by the Regulator Name Full Name Divisio City or Tow Wastes that are regulated by the Regulator Radiatio Protetio Committee Kuwait Matrix IAEA Def. - LILW-SL, LILW-LL AMIRI His Highess the Amir Kuwait Matrix IAEA Def. - LILW-SL, LILW-LL , Iteratioal Atomi Eergy Agey. This page geerated at :20:55 (loal Viea time.)

11 REGULATIONS Name MiDer Title or Name Miisterial Deree (324) of 2001 Referee Number MD-324 /2001 Date Promulgated or Prolaimed Wastes that are Matrix IAEA Def. - LILW-SL, LILW-LL overed by the idetified Law Law Name Title or Name DeLaw62 Amiri Deree: Deree Law No.62 for the year 1980 Regardig Protetio of the Eviromet & the Geeral Poliy for the Eviromet Protetio Referee Number Deree Law No. 62/1980 Date Promulgated or Prolaimed Wastes that are Matrix IAEA Def. - LILW-SL, LILW-LL overed by the idetified Law Law , Iteratioal Atomi Eergy Agey. This page geerated at :47:04 (loal Viea time.)

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