<?xml version="1.0" encoding="utf-8"?>

<RlxLum>

<general>
<version>2</version>
<application>EulumDB</application>
<language>7</language>
<checksum>h9R5JsiIHpEsZRNm</checksum>
</general>

<luminaire>
<OrderNumber>1008197</OrderNumber>
<Manufacturer>SLV</Manufacturer>
<Name>PHOTONI CYL WL</Name>
<MainGroup>1</MainGroup>
<ProdGroup>323</ProdGroup>
<ProdGroupTxt lang="29">WALL FITTINGS OUTDOOR</ProdGroupTxt>
<ProdGroupTxt lang="21">WALL FITTINGS OUTDOOR</ProdGroupTxt>
<ProdGroupTxt lang="19">WENARMATUREN OUTDOOR</ProdGroupTxt>
<ProdGroupTxt lang="16">MONTAGGIO PARETE ESTERNO</ProdGroupTxt>
<ProdGroupTxt lang="12">APPLIQUES EXTERIEUR</ProdGroupTxt>
<ProdGroupTxt lang="10"></ProdGroupTxt>
<ProdGroupTxt lang="09">WALL FITTINGS OUTDOOR</ProdGroupTxt>
<ProdGroupTxt lang="07">Wandleuchten OUTDOOR</ProdGroupTxt>
<ProdGroupTxt lang="06">VÆGARMATURER OUTDOOR</ProdGroupTxt>
<ProdGroupTxt lang="05">VENKOVNÍ NÁSTĚNNÁ SVÍTIDLA</ProdGroupTxt>
<BallastType>801</BallastType>
<BallastTypeTxt lang="29">LED driver</BallastTypeTxt>
<BallastTypeTxt lang="21">LED driver</BallastTypeTxt>
<BallastTypeTxt lang="19">LED driver</BallastTypeTxt>
<BallastTypeTxt lang="16">LED driver</BallastTypeTxt>
<BallastTypeTxt lang="12">LED driver</BallastTypeTxt>
<BallastTypeTxt lang="10"></BallastTypeTxt>
<BallastTypeTxt lang="09">LED driver</BallastTypeTxt>
<BallastTypeTxt lang="07">LED Treiber</BallastTypeTxt>
<BallastTypeTxt lang="06">LED driver</BallastTypeTxt>
<BallastTypeTxt lang="05">LED driver</BallastTypeTxt>
<Power>12</Power>
<LumText lang="29">PHOTONI CYL, Vägglampa, cylindrisk, 1x max. 13W, E27, svart

</LumText>
<LumText lang="21">PHOTONI CYL, lampa ścienna, cylindryczna, 1x max. 13W, E27, czarny
</LumText>
<LumText lang="19">PHOTONI CYL, wandopbouwarmatuur, cilindrisch, 1x max. 13W, E27, zwart
</LumText>
<LumText lang="16">PHOTONI CYL, lampada da parete, cilindrica, 1x max. 13W, E27, nera
</LumText>
<LumText lang="12">PHOTONI CYL, applique en saillie, cylindrique, 1x max. 13 W, E27, noir

</LumText>
<LumText lang="10"></LumText>
<LumText lang="09">PHOTONI CYL, wall-mounted light, cylindrical, 1x max. 13W, E27, black

</LumText>
<LumText lang="07">PHOTONI CYL, Wandaufbauleuchte, zylindrisch, 1x max. 13W, E27, schwarz


</LumText>
<LumText lang="06">PHOTONI CYL, Vægmonteret lampe, cylindrisk, 1x max. 13W, E27, sort

</LumText>
<LumText lang="05">PHOTONI CYL, nástěnné svítidlo k povrchové montáži, válcové, 1x max. 13W, E27, černá barva
</LumText>

<equipment>
<NumLamps>1</NumLamps>
<LampGroupTxt>LED IAA/G</LampGroupTxt>
<Power>12</Power>
<LightFlux>860</LightFlux>
<ColorTemp>827/2700K</ColorTemp>
<FWS_FWI>1B/80…89</FWS_FWI>
</equipment>

<geometry>
<ExtraHeight>1600</ExtraHeight>
</geometry>

<ldc>
<Type>EULUM</Type>
<File>1007581_ldc.ldt</File>
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