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Census Data/Projections, 1999 & 2000 Relief Bens., Supplementary Feeding Bens., Census data/Projections, 1999 & 2000 Relief Bens., Supplementary Feeding Bens., "Close Monitoring Bens." and Percent of Crop from belg TIGRAY Zone 1994 census 1999 beneficiaries - May '99 2000 beneficiaries - Jan 2000 "Close Priority % Crop from Belg Zone ID/prio Wereda Total Pop. 1999 Pop. 1999 Bens. 1999 bens % 2000 Pop. 2000 Bens 2000 bens % Bens. Sup. Monitoring" Wereda EC-LFSU FAO/MoA rity Estimate of Pop. Estimate of Pop. Feeding Bens. Bens. estimates estimates 1 ASEGEDE TSIMBELA 96,115 111,424 114,766 1 KAFTA HUMERA 48,690 56,445 58,138 1 LAELAY ADIYABO 79,832 92,547 5,590 6% 95,324 7,800 8% Western 1 MEDEBAY ZANA 97,237 112,724 116,106 2,100 2% 1 TAHTAY ADIYABO 80,934 93,825 6,420 7% 96,639 18,300 19% 1 TAHTAY KORARO 83,492 96,790 99,694 2,800 3% 1 TSEGEDE 59,846 69,378 71,459 1 TSILEMTI 97,630 113,180 37,990 34% 116,575 43,000 37% 15,050 1 WELKAIT 90,186 104,550 107,687 Sub Total 733,962 850,863 50,000 6% 876,389 74,000 8% 15,050 18,500 *2 ABERGELE 58,373 67,670 11,480 17% 69,700 52,200 75% 18,270 52,200 *2 ADWA 109,203 126,596 9,940 8% 130,394 39,600 30% 13,860 39,600 2 DEGUA TEMBEN 89,037 103,218 7,360 7% 106,315 34,000 32% 11,900 Central 2 ENTICHO 131,168 152,060 22,850 15% 156,621 82,300 53% 28,805 2 KOLA TEMBEN 113,712 131,823 12,040 9% 135,778 62,700 46% 21,945 2 LAELAY MAYCHEW 90,123 104,477 3,840 4% 107,612 19,600 18% 6,860 2 MEREB LEHE 78,094 90,532 14,900 16% 93,248 57,500 62% 20,125 *2 NAEDER ADET 84,942 98,471 15,000 15% 101,425 40,800 40% 14,280 40,800 2 TAHTAY MAYCHEW 78,562 91,075 10,000 11% 93,807 23,600 25% 8,260 *2 WERIE LEHE 110,636 128,257 14,800 12% 132,105 69,300 52% 24,255 69,300 Sub Total 943,850 1,094,181 122,210 11% 1,127,006 481,600 43% 168,560 114,500 201,900 3 ATSBI WENBERTA 84,863 98,379 36,730 37% 101,331 53,900 53% 18,865 3 EROB 17,776 20,607 21,225 0 Eastern 3 GANTA AFESHUM 122,827 142,390 37,390 26% 146,662 45,400 31% 15,890 3 GULOMAHDA 79,141 91,746 24,970 27% 94,498 0 3 HAWZEN 93,300 108,160 11,320 10% 111,405 61,500 55% 21,525 3 SAESI TSAEDAEMBA 101,478 117,641 38,890 33% 121,170 53,400 44% 18,690 3 WUKRO 85,561 99,189 8,230 8% 102,164 41,800 41% 14,630 Sub Total 584,946 678,113 157,530 23% 698,456 256,000 37% 89,600 41,000 4 ALAJE 83,692 97,022 4,840 5% 99,933 23,200 23% 8,120 1% 4 ALAMATA 93,659 108,576 44,140 41% 111,834 21,800 19% 7,630 11% 21% 4 ENDAMEHONI 81,657 94,663 6,360 7% 97,503 19,000 19% 6,650 2% 1% South 4 ENDERTA 105,814 122,667 6,050 5% 126,347 34,600 27% 12,110 4 HINTALO WAJIRAT 110,926 128,594 9,680 8% 132,451 33,300 25% 11,655 1% 4 MEKELE 96,938 112,378 115,749 0 4 OFLA 124,484 144,311 54,440 38% 148,640 35,100 24% 12,285 11% 18% 4 RAYAAZEBO 87,638 101,596 33,070 33% 104,644 38,000 36% 13,300 8% 24% 4 SAMRE 88,701 102,829 12,100 12% 105,914 30,800 29% 10,780 Sub Total 873,509 1,012,636 170,680 17% 1,043,015 235,800 23% 82,530 127,000 5% TIGRAY TOTAL 3,136,267 3,635,793 500,420 14% 3,744,867 1,047,400 28% 355,740 301,000 201,900 Total displaced beneficiaries 315,936 Total all beneficiaries 1,363,336 36% UN-EUE August 1999/February 2000. See attached note data sources. Zone 1994 census 1999 beneficiaries - May '99 2000 beneficiaries - Jan 2000 "Close Priority % Crop from Belg Zone ID/prio Wereda Total Pop. 1999 Pop. 1999 Bens. 1999 bens % 2000 Pop. 2000 Bens 2000 bens % Bens. Sup. Monitoring" Wereda EC-LFSU FAO/MoA rity Estimate of Pop. Estimate of Pop. Feeding Bens. Bens. estimates estimates AMHARA 1 ADDI ARKAY 106,983 124,023 7,500 6% 127,743 31,860 25% 11,151 1 ALEFA 213,961 248,039 255,481 0 1 BELESA 140,214 162,546 9,860 6% 167,423 45,425 27% 15,899 *1 BEYEDA 76,680 88,893 22,500 25% 91,560 51,573 56% 18,051 51,573 1 CHILGA 166,086 192,539 198,315 0 North Gonder North 1 DABAT 118,566 137,450 25,220 18% 141,574 4,000 3% 1,400 1 DEBARK 120,754 139,987 4,780 3% 144,187 20,000 14% 7,000 1 DEMBIA 218,014 252,738 260,320 0 1 GONDAR 112,249 130,127 134,031 0 1 GONDAR ZURIA 192,337 222,971 229,660 0 *1 JANAMORA 125,516 145,507 24,480 17% 149,873 44,183 29% 15,464 44,183 1 LAY ARMACHEHO 117,471 136,181 140,267 1 METEMA 54,913 63,659 65,569 1 QUARA 35,600 41,270 42,508 1 SANJA 105,751 122,594 126,272 1 WEGERA 183,589 212,830 21,200 10% 219,215 12,894 6% Sub Total 2,088,684 2,421,357 115,540 5% 2,493,998 209,935 8% 68,964 40,446 95,756 2 DEBRE TABOR 22,455 26,031 26,812 2 DERA 212,341 246,161 253,546 18% South Gonder South 2 EBENAT 163,413 189,440 22,870 12% 195,124 92,812 48% 32,484 2 ESTE 296,978 344,279 354,607 50,161 14% 2 FARTA 228,772 265,209 16,666 6% 273,166 71,733 26% 25,107 2 FOGERA 185,280 214,790 9,780 5% 221,234 18,304 8% 2 KEMEKEM 220,414 255,520 15,000 6% 263,186 63,042 24% 2 LAY GAYINT 167,122 193,740 35,000 18% 199,552 103,155 52% 36,104 2 SIMADA 187,799 217,711 22,510 10% 224,242 56,689 25% 19,841 2 TACH GAYINT 84,158 97,562 20,040 21% 100,489 48,487 48% 16,970 Sub Total 1,768,732 2,050,445 141,866 7% 2,111,959 504,383 24% 130,507 166,343 3% *3 BUGNA 171,333 198,622 85,960 43% 204,581 67,986 33% 23,795 67,986 9% 15% 3 DAWUNTNA DELANT 145,401 168,560 58,250 35% 173,616 62,136 36% 21,748 27% 34% *3 GIDAN 135,805 157,435 119,600 76% 162,158 62,356 38% 21,825 62,356 29% 47% N. Wello N. *3 GUBA LAFTO 139,151 161,314 68,800 43% 166,154 59,325 36% 20,764 59,325 30% 31% 3 HABRU 168,172 194,957 30,250 16% 200,806 53,820 27% 11% 16% 3 KOBO 175,558 203,520 33,210 16% 209,625 54,236 26% 10% 6% 3 MEKET 193,683 224,532 55,000 24% 231,268 70,670 31% 24,735 2% 11% 3 WADLA 106,681 123,673 59,080 48% 127,383 45,328 36% 15,865 22% 34% 3 WELDIYA 24,533 28,440 29,294 Sub Total 1,260,317 1,461,053 510,150 35% 1,504,884 475,857 32% 128,730 16,267 189,667 15% *4 AMBASEL 111,172 128,879 77,578 60% 132,745 66,320 50% 23,212 66,320 23% 25% 4 DEBRESINA 125,126 145,055 69,735 48% 149,407 39,180 26% 4 DESSIE 97,314 112,814 116,198 4 DESSIE ZURIA 201,433 233,516 141,778 61% 240,522 95,478 40% 32% 25% 4 JAMA 107,365 124,465 22,658 18% 128,199 15,334 12% 4 KALU 170,523 197,683 61,912 31% 203,613 56,014 28% 19,605 10% South Wello South 4 KELALA 117,011 135,648 22,020 16% 139,717 33,113 24% 4 KOMBOLCHA 39,466 45,752 47,124 *4 KUTABER 126,805 147,002 50,810 35% 151,412 49,934 33% 17,477 49,934 20% 25% *4 LEGAMBO 158,785 184,075 99,200 54% 189,598 63,656 34% 22,280 63,656 53% 75% 4 MEKDELA 106,435 123,387 54,979 45% 127,089 51,687 41% 18,090 15% 4 SAYINT 193,616 224,454 56,342 25% 231,188 73,695 32% 25,793 10% 4 TEHULEDERE 119,240 138,232 28,426 21% 142,379 22,418 16% 16% 3% *4 TENTA 137,412 159,298 87,662 55% 164,077 92,919 57% 32,522 92,919 35% 5% 4 WEGDE 101,521 117,691 23,365 20% 121,221 22,826 19% 4 WERE ILU 120,193 139,337 50,922 37% 143,517 56,564 39% 6% 4 WEREBABU 90,386 104,782 29,070 28% 107,926 46,726 43% 16,354 21% 2% Sub Total 2,123,803 2,462,070 876,457 36% 2,535,932 785,864 31% 175,333 155,846 272,829 15% UN-EUE August 1999/February 2000.
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