Genie 1024, 1022 Light BULB/LENS Installation, Battery replacement, Visor clip, Light bulb, Lens

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8 REMOTE CONTROL BATTERY REPLACEMENT AND VISOR CLIP INSTALLATION

1.Battery replacement.

Use coin, ball-point pen or similar device.

Gently push straight in on battery cover lock tab as shown (Fig. 8-1).

Flip open battery cover.

Remove old battery.

Make sure new battery is facing proper direction (Match battery polarity with symbols inside battery cover) (Fig. 8-2).

Recommended replacement battery type: Alkaline A23, 12 volt.

Slip new battery into place.

Snap battery cover shut.

Operate remote to make sure it is working properly. (No re-programming is needed.)

2.Visor clip.

You will have to install the visor clip if you choose to carry your remote attached to the car visor.

Slide visor clip into back of remote control.

– It will snap into place (Fig. 8-3).

9LIGHT BULB/LENS INSTALLATION

NOTE: For lens cover locate Box 4.

1.Light bulb.

Recommendations.

Do NOT use a short neck bulb.

Light bulb should be no more than 60 Watts.

Use a heavy duty service bulb for longer life.

Screw bulb into socket.

2.Lens.

Select the white (lamp) cover. Do NOT use the colored cover in this location.

Line up lamp lens tabs on power head with corresponding slots in lens (Fig. 9-1).

Slide lens onto power head. Make sure the tabs are fully engaged into lens slots (Fig. 9-2).

Plug power cord back into electrical outlet.

Slide out

FIG. 8-1 Open battery cover.

and + polarity marks

FIG. 8-2 Match battery polarity.

FIG. 8-3 Attach visor clip.

Light bulb

Lens tabs

FIG. 9-1 Slide lens onto motor cover.

FIG. 9-2 Fasten lens.

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PN# 3642036212, 8/09/2007

 

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Contents Model 1022/1024 Electrical Shock Safety InformationMoving Door High Spring TensionOperator Features Table of ContentsSafety Features Do not USE AN Extension Cord Do not USE Alternate Power SuppliesSection Approx Typical Sectional Door InstallationMAX MIN Recommended Tools Parts Identification Not Shown Full SizeDo not Return to Point of Purchase Piece Rail Hardware Assembled View Chain tensionerOperator Assembly Box Label Example Internal boxesSplit Rail assembly Split Rail sectionsDo not move door spring Mounting the header bracket Installation Header and Door Mounting BracketsFinding header bracket mounting location ExtendAngle Iron on Finished Ceiling Mounting the assemblyMounting the Operator Unfinished or Open BeamInstall Door Arms Door Bracket2b. Wiring If not pre-wired Wall Control Installation2a. Wiring If pre-wired Wall Control locationPower Head With Rear Cover Removed -3 Insert wires Securely fasten wiresDo not install rear cover yet Mounting3a. Wiring If not pre-wired Mounting Safety Beam Source Red LED and Sensor Green LEDAs you go -6 on next Do not install the white lamp cover at this time 3b. Wiring pre-wiredRoute wire from ceiling to power head Power Head With Rear Cover Not Shown Cover clipsWith Power Supplied Connecting to PowerWith Permanent Wiring With Grounded PlugEngage Chain to Carriage Limit Controls location on power headDoor Limits Close Travel LimitErase OPEN/CLOSE Travel Limit Carriage LockUP/DOWN Force Contact Reverse TestProgramming Remote Controls Lost or Stolen RemoteVisor clip Light BULB/LENS InstallationBattery replacement Light bulbSafety Beam System MaintenanceRoutine Monthly Maintenance Door balancePower Cord Circuit Wiring DiagramTroubleshooting Guide Operation Troubleshooting Guide Power Head LED Possible Problem SolutionTransmitter Compliance Statement Limited Warranty For Answers Call
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1022, 1024 specifications

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