i Description of functions

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1 f MOVI-SWITCH S Descrpto of fuctos P Hz MOVI-SWITCH S. Descrpto of fuctos NOTES Ths catalog descrbes MOVI-SWITCH AC motors. The selecto tables for MOVI-SWITCH gearmotors correspod to those the gearmotor catalog for the same power ratg. The followg fgure shows a MOVI-SWITCH helcal-bevel gearmotor: AXX.. MOVI-SWITCH S features MOVI-SWITCH S s a gearmotor wth a tegrated electroc o/off swtch for two drectos of rotato ad tegrated full motor protecto. The drecto of rotato s reversed usg a reversg relay combato wth a log servce lfe. MOVI-SWITCH S s avalable two desgs: CB0: Bary cotrol CK0: Wth tegrated AS-Iterface Supply system motorg, brake cotrol as well as swtchg ad protecto fuctos are mplemeted the cotroller. The varous operatg states are dcated by the status LED. Wth the CB0 desg (bary cotrol), the coecto assgmet for clockwse drecto of rotato (CW) s compatble to MOVI-SWITCH E. Wth the CK0 desg (wth tegrated AS-Iterface), the coecto assgmet s compatble to MOVIMOT wth tegrated AS-Iterface. 6 Catalog Drve System for Decetralzed Istallato

2 MOVI-SWITCH S Descrpto of fuctos P f Hz.. Operatg prcple The followg fgure llustrates how MOVI-SWITCH S operates. MOVI-SWITCH -S [] U V W U V W [] AS-- AS-+ DI DI 0V V V 0V MSW/CK0 0V V 0V V CW OK CW CCW MSW/CB0 L L L [] Brake cotrol [] Rotatg feld detecto 99AXX Catalog Drve System for Decetralzed Istallato 6

3 f MOVI-SWITCH S Avalable MOVI-SWITCH motor combatos P Hz. Avalable MOVI-SWITCH motor combatos 000 /m - S Motor type DTD/MSW/C.0 DT0K/MSW/C.0 DT0N/MSW/C.0 DT90S/MSW/C.0 DT90L/MSW/C.0 DV00M/MSW/C.0 ) Wthout brake ) Wth brake I P N N M N 0- V N (00 V) [kw] [Nm] cosϕ η % J M I A /I A /M Mot m N N M η H /M ) ) M Bmax ) ) N 00% [/m] [A] [%] [0 - kgm ] [Nm] [kg] (.6). (.0). (.6).9 (.). (.) 6. (.9) /m - S Motor type DTD/MSW/C.0 DT0K/MSW/C.0 DT0N/MSW/C.0 DT90S/MSW/C.0 DT90L/MSW/C.0 DV00M/MSW/C.0 DV00L/MSW/C.0 ) Wthout brake ) Wth brake I P N N M N 0- V N (00 V) [kw] [Nm] cosϕ η % η 00% I A /I N M A /M N M H /M N ) J Mot M Bmax m ) ) ) [/m] [A] [%] [0 - kgm ] [Nm] [kg] (.). (.). (.). (.). (.).9 (.) 6. (6.) Catalog Drve System for Decetralzed Istallato

4 MOVI-SWITCH S Avalable MOVI-SWITCH motor combatos P f Hz 000 /m - S Motor type ) Wthout brake ) Wth brake 0 /m - S P N M N N 0- V I N (00 V) DTD6/MSW/C DT0K6/MSW/C DT0N6/MSW/C DT90S6/MSW/C DT90L6/MSW/C DV00M6/MSW/C Motor type ) Wthout brake ) Wth brake J M cosϕ I A /I A /M Mot m N N M M H /M ) ) Bmax ) ) N [kw] [Nm] [/m] [A] [0 - kgm ] [Nm] [kg] 0.9 (0.). (.9). (.). (.). (.). (.0) P N M N N I N 00 V M cosϕ I A /I A /M N J Mot m N M M H /M ) ) Bmax ) ) N [kw] [Nm] [/m] [A] [0 - kgm ] [Nm] [kg] DTD/MSW/C DT0N/MSW/C DT90S/MSW/C DT90L/MSW/C DV00M/MSW/C DV00L/MSW/C Catalog Drve System for Decetralzed Istallato 6

5 f MOVI-SWITCH S Coecto techology of CB0 desg (bary cotrol) P Hz. Coecto techology of CB0 desg (bary cotrol).. Stadard verso As stadard, MOVI-SWITCH S s equpped wth two plug coectors for coectg cotrol sgals ad V supply. The plug coectors are tegrated the cotrol ut, see the followg fgure. Order desgato of the stadard desg: MSW/CB0/RAA. CCW 0V X0 CW V OK 0V X0 CW V X0 X0 0AXX.. Optoal plug coectors The followg table shows the plug coectors the termal box that are avalable as opto for MOVI-SWITCH S (CB0 desg). For other types, please cotact SEW- EURODRIVE. Order desgato Fucto Maufacturer desgato MSW/CB0/REA/ASA Power Hartg Ha 0 ES p elemet (bult-o housg wth clps) MSW/CB0/RJA/AND Power Hartg Ha Q/0 p elemet (bulto housg wth clp) MSW/CB0/REA/ASAW Coecto to feld dstrbutor Z.W or Z.6W Hartg Ha 0 ES p elemet (bult-o housg wth clps) 6 Catalog Drve System for Decetralzed Istallato

6 MOVI-SWITCH S Coecto techology of CB0 desg (bary cotrol) P f Hz.. Possble plug coector postos The postos show the followg fgure are possble for plug coectors. Some postos mght ot be possble for certa gear ut types ad moutg postos (cotact SEW-EURODRIVE). X 0 (T) 0 (R) 0 (L) 6 X X X X 90 (B) AXX Catalog Drve System for Decetralzed Istallato 69

7 f MOVI-SWITCH S Coecto techology of CB0 desg (bary cotrol) P Hz.. P assgmets ASA p The followg fgure shows the assgmet of the ASA plug coector: assgmet L L L MOVI-SWITCH MOVI-SWITCH MSW/CB0/REA/ASA ASA 90AXX AND p assgmet The followg fgure shows the assgmet of the AND plug coector: MOVI-SWITCH MOVI-SWITCH L MSW/CB0/RJA/AND 6 AND L PE L 9AXX 0 Catalog Drve System for Decetralzed Istallato

8 MOVI-SWITCH S Coecto techology of CB0 desg (bary cotrol) P f Hz ASAW p assgmet The followg fgure shows the assgmet of the ASAW plug coector: R L DOV [] OK L L L V 0V [] Plug coector motorg possble wth sutable coecto wrg ASAW DT/DV../MSW/CB0/REA/ASAW 6660AXX Catalog Drve System for Decetralzed Istallato

9 f MOVI-SWITCH S Coecto techology of CK0 desg (wth tegrated AS-Iterface) P Hz. Coecto techology of CK0 desg (wth tegrated AS-Iterface).. Stadard verso MOVI-SWITCH S s equpped wth plug coectors for AS-Iterface ad dgtal puts as stadard. The plug coectors are tegrated the cotrol ut, see the followg fgure. Order desgato of the stadard desg: MSW/CK0/RAA. V AS- - X0 0V AS- + 0V DI X0 V DI X0 X0 0AXX.. Optoal plug coectors The followg table shows the optoal plug coectors the termal box that are avalable for MOVI-SWITCH S (CK0 desg). For other types, please cotact SEW- EURODRIVE. Order desgato Fucto Maufacturer desgato MSW/CK0/REA/ASA/AVS0 Power + AUX PWR Hartg Ha 0 ES p elemet (bult-o housg wth clps) + x roud plug coector M x MSW/CK0/RJA/AND/AVS0 Power + AUX PWR Hartg Ha Q/0 p elemet (bulto housg wth clp) + x roud plug coector M x Catalog Drve System for Decetralzed Istallato

10 MOVI-SWITCH S Coecto techology of CK0 desg (wth tegrated AS-Iterface) P f Hz.. Possble plug coector postos The postos show the followg fgure are possble for plug coectors. Some postos mght ot be possble for certa gear ut types ad moutg postos (cotact SEW-EURODRIVE). X 0 (T) 0 (R) 0 (L) X X X 6 X 90 (B) AXX Catalog Drve System for Decetralzed Istallato

11 f MOVI-SWITCH S Coecto techology of CK0 desg (wth tegrated AS-Iterface) P Hz.. P assgmets AVS0/ASA p The followg fgure shows the assgmet of the AVS0/ASA plug coector: assgmet V 0 V MOVI-SWITCH MOVI-SWITCH L L L MSW/CK0/REA/ASA/AVS0 AVS ASA 6AXX AVS0/AND p assgmet The followg fgure shows the assgmet of the AVS0/AND plug coector: V 0 V MOVI-SWITCH MOVI-SWITCH L 6 MSW/CK0/RJA/AND/AVS0 AVS0 L PE L AND 9AXX Catalog Drve System for Decetralzed Istallato

12 MOVI-SWITCH S Sample ut desgato for MOVI-SWITCH S P f Hz. Sample ut desgato for MOVI-SWITCH S The ut desgato of the MOVI-SWITCH S drve starts from the compoet o the output ed. For example, a MOVI-SWITCH S helcal gearmotor wth brake ad ASA plug coector has the followg ut desgato: RDTD/BMG/TF/Z/MSW/CK0/REA/ASA/AVS / 0. S 00 Y.6 M F 6 00 AC. MINER. OEL CLP0 /.l R DT D/BMG/TF/Z/MSW/CK0/REA/ASA/AVS0 69AXX Plug coector opto Plug coector opto Termal box desg varats Desg: 0 = Stadard Sgal type: B = Bary K = AS-Iterface Cotrol MOVI-SWITCH Motor opto heavy fa Thermstor (stadard) Brake (motor opto) Motor sze ad umber of poles Motor seres Gear ut sze Gear ut seres Catalog Drve System for Decetralzed Istallato

13 MOVI-SWITCH S f Optos P Hz.6 Optos.6. PA opto for moutg the MOVI-SWITCH cotrol ut close to the motor Fucto descrpto The PA opto allows for moutg the MOVI-SWITCH close proxmty to the motor. The verter s coected to the motor usg a pre-fabrcated hybrd cable (see page ). Wth brake motors, the brake voltage must correspod to the voltage of the phase-to-phase voltage (e.g. 00 V supply voltage = 00 V brake col). MOVI-SWITCH wth PA opto s suppled eclosure IP6. 6AXX Avalable desgs The followg desgs are avalable. These desgs ca be combed wth all motors lsted the secto "Avalable MOVI-SWITCH motor combatos (page 66). Coecto to motor APG ALA MOVI-SWITCH bary cotrol MSW S-0A/CB0/PA/RIA/APG MSW S-0A/CB0/CC/PA/RIA/APG ) MSW S-0A/CB0/PA/RIA/ALA MSW S-0A/CB0/CC/PA/RIA/ALA ) ) wth le protecto (see fgure below) MOVI-SWITCH wth tegrated ASIterface MSW S-0A/CK0/PA/RIA/APG MSW S-0A/CK0/CC/PA/RIA/APG ) MSW S-0A/CK0/PA/RIA/ALA MSW S-0A/CK0/CC/PA/RIA/ALA ) 6 Catalog Drve System for Decetralzed Istallato

14 MOVI-SWITCH S Optos P f Hz Posto of plug coector The followg table shows the postos of plug coectors: APG ALA APG ALA Sample ut desgato For example, a MOVI-SWITCH for moutg close proxmty to the motor wth ALA plug coector for motor coecto has the followg ut desgato: MSW S-0A/CB0/PA/RIA/ALA Plug coector for the coecto to the motor 6AXX Termal box desg Adapter for moutg MOVI-SWITCH close to the motor Desg: 0 = Stadard Sgal type: B = Bary K = AS-Iterface Cotrol MOVI-SWITCH Catalog Drve System for Decetralzed Istallato

15 MOVI-SWITCH S f Optos P Hz Coectg MOVI-SWITCH S to motors (whe mouted close to the motor) MOVI-SWITCH Hybrd cable Cable type MSW S../C.0/PA/RIA/APG MSW S../C.0/CC/PA/RIA/APG ) Drve Part umber: 0 9 C AC motors wth cable glad APG Part umber: 0 9 C AC motors wth ASB plug coector Part umber: 06 A AC motors wth APG plug coector Part umber: 09 (W) A AC motors wth IS plug coector, szes DTDT90 R 0/00 9 Laege (m): Auftragsummer: Part umber: 09 (W) A AC motors wth IS plug coector, sze DV00 R 0/00 9 Laege (m): Auftragsummer: MSW S../C.0/PA/RIA/ALA Part umber: C AC motors wth cable glad MSW S../C.0/CC/PA/RIA/ALA ) ALA Part umber: 0 C AC motors wth ASB plug coector ) Wth le protecto Catalog Drve System for Decetralzed Istallato

16 MOVI-SWITCH S Optos P f Hz Dmeso drawg of MOVI-SWITCH S wth opto PA (APG plug coector) The followg fgure shows the dmesos of MOVI-SWITCH S wth opto PA (APG plug coector): AXX Catalog Drve System for Decetralzed Istallato 9

17 MOVI-SWITCH S f Optos P Hz Dmeso drawg of MOVI-SWITCH S wth opto PA (ALA plug coector) The followg fgure shows the dmesos of MOVI-SWITCH S wth opto PA (ALA plug coector): AXX 0 Catalog Drve System for Decetralzed Istallato

18 MOVI-SWITCH S Dmeso sheets P f Hz. Dmeso sheets.. Dmeso sheet otes Please observe the followg otes regardg the dmeso sheets for MOVI-SWITCH AC motors (DT/DV): The foot dmesos of the DT90 motor dffer from IEC dmesos. Fa guards of DT.., DT90.. foot-mouted motors are flat-topped. Maual brake release ca be pvoted through 90 together wth the termal box, wth the excepto of DT.., DT90.. foot-mouted motors. For brake motors do ot forget to add the space requred for removg the fa guard (= fa guard dameter). Leave a clearace of at least half the fa guard dameter to provde uhdered ar access Catalog Drve System for Decetralzed Istallato

19 f MOVI-SWITCH S Dmeso sheets P Hz Catalog Drve System for Decetralzed Istallato

20 MOVI-SWITCH S Dmeso sheets P f Hz Catalog Drve System for Decetralzed Istallato

21 f MOVI-SWITCH S Dmeso sheets P Hz Catalog Drve System for Decetralzed Istallato

22 MOVI-SWITCH S Dmeso sheets P f Hz Catalog Drve System for Decetralzed Istallato

23 f MOVI-SWITCH S Dmeso sheets P Hz 6 Catalog Drve System for Decetralzed Istallato

24 MOVI-SWITCH S Dmeso sheets P f Hz Catalog Drve System for Decetralzed Istallato

25 f MOVI-SWITCH S Dmeso sheets P Hz Catalog Drve System for Decetralzed Istallato

26 MOVI-SWITCH S Dmeso sheets P f Hz Catalog Drve System for Decetralzed Istallato 9

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