COTTAGES AT BEAR CREEK TENTATIVE IMPROVEMENT PLANS

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1 COTTAGE AT BEAR CREEK TETATIVE IMPROVEMET PLA E TL: CD000 EGIEERI G, I C. W Franklin Ave Bend, OR 0 (0) -000 () -000 C I V I L T R U C T U R A L C:\Egnyte\hared\un\All Jobs\0 all jobs\ - bear creek subdivision - blake\0_working drawings\preliminary or construction\0_oite\title HEET.dwg, C-0., ep, 0 :pm, Dustin PROJECT IFORMATIO OWER/DEVELOPER: REIDE LLC 0 W FRAKLI AVE #0 BED, OR 0 GEOTECHICAL: URVEYOR: TAXLOT: ITE AREA: AREA DITURBED: GRADIG IFORMATIO* CUT QUATITY: FILL QUATITY: ET QUATITY: GEOTECHICAL TREET AE CITY,T ##### U COUTRY LAD URVEYIG 0 E ARMOUR RD BED, OR 0 CD000. AC XXX AC XXX CUBIC YARD XXX CUBIC YARD XXX CUBIC YARD EXPORT *OTE: THE ABOVE QUATITIE ARE FOR PLAIG AD PERMITTIG PURPOE OLY. HRIKAGE; COOLIDATIO AD UBIDECE FACTOR; LOE DUE TO CLEARIG AD DEMOLITIO OPERATIO; AD TRECHIG FOR UTILITIE AD FOUDATIO ARE OT ICLUDED. ETIMATED EARTHWORK QUATITIE ARE BAED O THE APPROXIMATE DIFFERECE BETWEE EXITIG GRADE AD PROPOED FIIHED GRADE OR PAVEMET UBGRADE, A IDICATED O THE PLA, AD HOULD VARY ACCORDIG TO THEE FACTOR AD LOE. THE COTRACTOR HALL PERFORM A EARTHWORK ETIMATE FOR THE PURPOE OF PREPARIG A LUMP UM BID PRICE FOR EARTHWORK. THE BID PRICE HALL ICLUDE COT FOR AY ECEARY IMPORT AD PLACEMET OF EARTH MATERIAL OR THE EXPORT AD PROPER DIPOAL OF EXCE EARTH MATERIAL. TADARD ABBREVIATIO AC BLDG BCR BVC BW CB C/L CMU COC DW ECR EG EP EVC FF FG FH FL F GB APHALTIC COCRETE BUILDIG BEGI CURB RETUR BEGI VERTICAL CURVE BOTTOM OF WALL CATCH BAI CETERLIE COCRETE MAORY UIT COCRETE DRIVEWAY ED CURB RETUR EXITIG GRADE EDGE OF PAVEMET ED VERTICAL CURVE FIIHED FLOOR FIIHED GRADE FIRE HYDRAT FLOW LIE FIIHED URFACE GRADE BREAK IE IV LA G PA PCC P/L POC P PVC RW D G TC TF TG TW VC IVERT ELEVATIO IVERT LADCAPE AREA ATURAL GRADE PLATER AREA PORTLAD CEMET COCRETE PROPERTY LIE POIT OF COECTIO PARKIG TRIPE POLYVIYL CHLORIDE RIGHT OF WAY TORM DRAI UB-GRADE ELEVATIO AITARY EWER TOP OF CURB, COCRETE TOP OF FOOTIG TOP OF GRATE TOP OF WALL VERTICAL CURVE VICIITY MAP E TH T E ALPEVIEW L HWY 0 HEET C-0. C-.0 C-.0 C-.0 UDERGROUD ERVICE ALERT HEET TITLE TITLE HEET EXITIG CODITIO PLA TETATIVE PLAT DIAL TOLL FREE OR ( ) AT LEAT TWO DAY BEFORE YOU DIG TETATIVE UTILITY PLA PROJECT ITE E IAIAH DR E CRAVE L E TELIMA L E CEA DR E CEA DR E BEAR CREEK RD UTILITY PURVEYOR ELECTRICITY: TV/TELEPHOE ITERET: EWER: WATER: ATURAL GA: DIG ALERT HEET IDEX C-.0 PACIFIC POWER E WEBTER AVE () -00 BED BROADBAD 00 HERMA RD () - CETURYLIK 00 W KEAREY AVE () - CITY OF BED UTILITY DEPARTMET BOYD ACRE RD () -000 CITY OF BED UTILITY DEPARTMET BOYD ACRE RD () -000 CACADE ATURAL GA 00 O.B. RILEY RD BED, OR TETATIVE GRADIG AD DRAIAGE PLA PRIOR TO COMMECIG OF AY EXCAVATIO, DIGGIG, POT HOLIG, ETC. CALL DIG ALERT FOR AIGMET OF A IQUIRY ID UMBER, BECAUE O EARTH WORK HALL COMMECE ULE THE COTRACTOR HA OBTAIED THI AD EACH UTILITY OR OWER OF UBURFACE FACILITIE HA LOCATED AD MARKED THEIR UBURFACE FACILITIE I THE AREA OF WORK REGITERED PROFEIOAL COTTAGE AT BEAR CREEK J UL, 0 0 PLA REVIEW ET OT FOR COTRUCTIO E cale: PER PLA TITLE HEET C-0.

2 C:\Egnyte\hared\un\All Jobs\0 all jobs\ - bear creek subdivision - blake\0_working drawings\preliminary or construction\0_oite\demolitio HEET.dwg, C-., ep, 0 :pm, Dustin CEA DR. '' W '' W '' W E CRAVE '' '' '' '' W " water- loc? '' W '' W '' W '' '' '' G G G G G /" IR W/CAP hwa " s. swr. " water '' '' '' '' '' '' '' W '' W '' W '' W '' '' '' '' '' " water- loc? D D /" IR W/CAP dea /" IR W/CAP hwa /" IR W/CAP dea " water D /" IR W/CAP " MAPLE /" IR W/CAP /" IR W/CAP " PODO /" IR O CAP * /" IR O CAP /" IR O CAP **" APE * " JPR " PODO " JPR " JPR * " JPR " PODO " PODO " " PODO JPR /" IR O CAP " PODO * * * " PODO 0" JPR " PODO " PODO 0" JPR 0" PODO * " PIE /" " IR JPR " W/CAP JPR " PODO * 0" JPR 0" PODO " PODO " JPR * 0" JPR " PODO " PODO *" TREE " PODO E CRAVE 0 G D " PODO " PODO ' EWER EAEMET (E) EXITIG.0' PUBLIC ACCE EAEMET O ORTH PROPERTY 0' BEAR CREEK ROW 0 0' CEA DR ROW 0 0 EXITIG ACCE TO HEALEY HEIGHT APARTMET EXITIG CODITIO OTE 0 EXITIG FECE TO BE REMOVED EXITIG COCRETE BLOCK RETAIIG WALL EXITIG FIRE HYDRAT TO REMAI (TYP OF ) EXITIG " WATER MAI EXITIG " AITARY EWER MAI EXITIG AITARY EWER MAHOLE EXITIG DRYWELL EXITIG TORM TRUCTURE EXITIG GA LIE EXITIG OVERHEAD POWER EXITIG PROPERTY LIE EXITIG GA VALVE EXITIG ACCE AD UTILITY EAEMET URVEY OTE: TOPOGRAPHIC URVEY PROVIDED BY: U COUTRY EGIEERIG & URVEYIG 0 E ARMOUR ROAD BED, OR 0 () - URVEY CODUCTED AUGUT, 0 HORIZOTAL CALE: FEET cale: PER PLA PLA REVIEW ET OT FOR COTRUCTIO J UL, 0 0 REGITERED PROFEIOAL EXITIG CODITIO PLA C-.0 COTTAGE AT BEAR CREEK E EGIEERI G, I C. C I V I L T R U C T U R A L W Franklin Ave Bend, OR 0 (0) -000 () -000

3 C:\Egnyte\hared\un\All Jobs\0 All Jobs\ - Bear Creek ubdivision - Blake\0_Working Drawings\Preliminary or Construction\0_TETATIVE MAP\0_OITE\GRADIG HEET.dwg, C-.0, ov, 0 :pm, Dustin,0 F,0 F,0 F, F, F, F, F,00 F, F,0 F,0 F,00 F,0 F,00 F,0 F,0 F,0 F,0 F,00 F,00 F,00 F,00 F,00 F,00 F,0 F, F,00 F 0 0, F MAX FILL LOPE : MAX CUT LOPE : APARTMET ACCE COCRETE DRIVEWAY APRO MAILBOXE AD PARKIG BAY PROPOED EW ROAD (CEA) EXITIG.0' PUBLIC ACCE EAEMET O ORTH PROPERTY ' ROW '.. L=.. L= L=.. L=.0 L= L= ' EWER EAEMET (E) 0' ACCE EAEMET. 0' ' ROW ' EXITIG 0' BEAR CREEK ROW 0' TO CL 0' L=.... W CEA ' IDE WALK ' PLATER 0' DEDICATED ROW ' TREET WIDTH ' PAVIG ' PAVIG ' IDE ' WALK PLATER EW CURB PROPOED EW TREET CRO ECTIO (TYP.) ALL PAVIG TO BE DOE I ACCORDACE WITH CITY OF BED TADARD FOR LOCAL ROAD. T MAX FILL LOPE : 0' PUE 0' PUE 0.' 0.' EW CURB MAX CUT LOPE : L=0. ' WIDE CURB-TIGHT IDEWALK ALOG EXITIG PUBLIC ACCE EAEMET 0' PUE DRIVE CL ROW CL ' WIDE CURB-TIGHT IDEWALK ALOG EXITIG 0' PUE 0' PUE PUBLIC ACCE EAEMET ' PAE ' PAE HORIZOTAL CALE: FEET cale: PER PLA PLA REVIEW ET OT FOR COTRUCTIO J UL, 0 0 REGITERED PROFEIOAL TETATIVE PLAT C-.0 COTTAGE AT BEAR CREEK E EGIEERI G, I C. C I V I L T R U C T U R A L W Franklin Ave Bend, OR 0 (0) -000 () -000

4 C:\Egnyte\hared\un\All Jobs\0 All Jobs\ - Bear Creek ubdivision - Blake\0_Working Drawings\Preliminary or Construction\0_TETATIVE MAP\0_OITE\GRADIG HEET.dwg, C-., ov, 0 :pm, Dustin 0 '"E, F,0 F,0 F,0 F, F, F, F,00 F, F,0 F,0 F,00 F,0 F,0 F,0 F,00 F,0 F,0 F,00 F,00 F,00 F,00 F,00 F,00 F,0 F,00 F, F 0 0, F 0 '"W " water- loc? " s. swr. " water W CEA " water- loc? D D EW ROAD (CEA) C C M D M D C C '"W.' 0.' '0"E.' " water D.' '0"W 0 0'"E.'.0' CUT & FILL LEGED umber DEPTH Color > ' CUT > ' FILL D MATCH EXITIG CURB D D MATCH EXITIG CURB D D D D D D D D D D GEERAL OTE: ALL TORMWATER RUOFF I THE RIGHT-OF-WAY WILL BE COTAIED AD IFILTRATED BY VEGETATED DRAIAGE WALE OR DRY WELL. TREE LEGED ALL TORMWATER RUOFF O IDIVIDUAL LOT HALL REMAI O THE LOT TREE > " TO REMAI TORM DRAI OTE: TORMWATER DRAIAGE CALCULATIO AD DEIG HALL FOLLOW THE METHODOLOGIE OUTLIED I THE CETRAL OREGO TORMWATER MAUAL AD PER CITY OF BED TADARD AD PECIFICATIO TREE > " TO BE REMOVED D D EXITIG CATCH BAI EXITIG DRYWELL TO REMAI ALL PAVIG TO BE DOE I ACCORDACE WITH COB TADARD FOR LOCAL TREET D PROPOED CATCH BAI D PROPOED TORM PIPE D PROPOED EDIMETATIO MAHOLE D PROPOED DRYWELL D EXITIG TORMWATER WALE TO REMAI A CUT AD FILL DETAIL CALE: " = 00' HORIZOTAL CALE: FEET cale: PER PLA PLA REVIEW ET OT FOR COTRUCTIO J UL, 0 0 REGITERED PROFEIOAL TETATIVE GRADIG AD DRAIAGE PLA C-.0 COTTAGE AT BEAR CREEK E EGIEERI G, I C. C I V I L T R U C T U R A L W Franklin Ave Bend, OR 0 (0) -000 () -000

5 C:\Egnyte\hared\un\All Jobs\0 All Jobs\ - Bear Creek ubdivision - Blake\0_Working Drawings\Preliminary or Construction\0_TETATIVE MAP\0_OITE\UTILITY HEET.dwg, C-., ov, 0 :pm, Dustin, F,0 F, F,0 F,0 F, F, F,00 F, F,0 F,0 F,00 F,0 F,00 F,0 F,0 F,0 F,0 F,00 F,00 F,00 F,00 F,00 F,00 F,0 F, F,00 F 0 0 '' W '' W '' W, F '' '' '' '' W '' W '' W '' '' '' '' W CEA '' W '' W '' W '' '' '' W '' W '' W '' W '' W '' W '' W '' W '' W EW ROAD (CEA) '' '' '' '' '' '' '' '' '' W W G G G G G '' W D D '' '' '' '' '' '' W '' W '' W '' W D '' '' '' '' '' /" IR W/CAP dea G D HORIZOTAL CALE: FEET W W W 0' PUE W W W W 0' PUE W W W 0' PUE W W 0' MI EPARATIO BETWEE WATER AD EWER ERVICE AITARY EWER OTE: EXITIG " GRAVITY EWER MAI EXITIG GRAVITY EWER MAHOLE PROPOED " GRAVITY EWER MAI PROPOED GRAVITY EWER MAHOLE PROPOED EWER LATERAL (TYP) PROPOED EWER ERVICE LIE (TYP). PER LOT WATER YTEM OTE: W W W W W W EXITIG " WATER MAI PROPOED " WATER MAI PROPOED FIRE HYDRAT PROPOED WATER METER (TYP) COECT TO EXITIG COB WATER EXITIG FIRE HYDRAT OTE:. PROPOED IMPROVEMET I EW TREET ARE OFFOF CETERLIE I ORDER TO BETTER MATCH EXITIG ITERECTIO (CEA & E BEAR CREEK RD).. WATER TO BE PROVIDED BY CITY OF BED WATER YTEM. AITARY EWER IMPROVEMET WILL BE DEIGED AD COTRUCTED PER CITY OF BED TADARD AD PECIFICATIO. TREET AD RELATED ELEMET WILL BE DEIGED AD COTRUCTED PER CITY OF BED TADARD AD PECIFICATIO.. FRACHIE UTILITY COECTIO HALL BE PROVIDED TO ALL LOT AD WILL BE DETAILED I THE COTRUCTIO DOCUMET PHAE. cale: PER PLA PLA REVIEW ET OT FOR COTRUCTIO J UL, 0 0 REGITERED PROFEIOAL TETATIVE UTILITY PLA C-.0 COTTAGE AT BEAR CREEK E EGIEERI G, I C. C I V I L T R U C T U R A L W Franklin Ave Bend, OR 0 (0) -000 () -000

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