The JACKFIELD TILE Museum

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1 2 The JACKFIELD TILE Museum Key stage To Worksheet & Guide Ho may peaoks a you fid i the museum? Name Crave Dui Jakfied Limited, Jakfied Tie Museum, Irobridge Gorge, Shropshire TF8 7LJ teephoe: fasimie: e-mai: jeifer@ravedui-jakfiedouk r a v e d u i - j a k f i e d o u k

2 Itrodutory Gaery Through the brass doors, first room of the museum Fid the asers to these questios by readig the iformatio o the as 1 What ere the three most importat rivers i Egad? 2 Three types of boats ere used to arry goods up ad do the river sever, hat ere they? 3 What ere the five mai oa ra materias? 4 I 1851 ho may hidre ere registered i shoo? 5 Who ere Joh Horby Mas Sos? & 6 I hat year as the sever vaey raiay opeed? Crave Dui Jakfied Limited, Jakfied Tie Museum, Irobridge Gorge, Shropshire TF8 7LJ teephoe: fasimie: e-mai: jeifer@ravedui-jakfiedouk r a v e d u i - j a k f i e d o u k

3 The Trade Shoroom Up the mai stairase, tur right I this room peope oud have hose their ties to buy from the fatory Look aroud Choose ad dra your to favourite ties Fasiatig Fat! Foor ties are made to be aked o so they are ormay smooth ad ofte ugazed As a ties do ot have this restritio they a have raised patters ad be highy deorative Touh the ties o the as Ca you te if they are foor or a ties? Copy a eausti foor tie A eausti foor tie Crave Dui Jakfied Limited, Jakfied Tie Museum, Irobridge Gorge, Shropshire TF8 7LJ teephoe: fasimie: e-mai: jeifer@ravedui-jakfiedouk r a v e d u i - j a k f i e d o u k

4 Fatory Offies Up the mai stairase, tur right Lookig ito the od offies, a you ist beo thigs that are o differet i moder offies Od Offie Moder Offie Ca you sketh the od teephoe? What time is the ok stopped at? What as the phoe umber of the Crave Dui fatory? Crave Dui Jakfied Limited, Jakfied Tie Museum, Irobridge Gorge, Shropshire TF8 7LJ teephoe: fasimie: e-mai: jeifer@ravedui-jakfiedouk r a v e d u i - j a k f i e d o u k

5 Stye Gaery Left at the top of the stairase Fasiatig Fat! This room as the origia desig studio of the Crave Dui fatory Why do you thik they put i suh arge idos? Fid a tie ith a aima o ad dra it Fid these ties What stye are they? Whih famous artist ifueed its desig? Fid a foer or patter ad dra it Whe as this tie made? What does the tie ext to this say? Crave Dui Jakfied Limited, Jakfied Tie Museum, Irobridge Gorge, Shropshire TF8 7LJ teephoe: fasimie: e-mai: jeifer@ravedui-jakfiedouk r a v e d u i - j a k f i e d o u k

6 Ties everyhere Cotiue through the arhed doors As you ak through the ties everyhere rooms, thik about hy ties ere used i eah pae Did you ko? Differet ties ere used i eah statios so peope oud ko here they ere, ver y hepfu if you oud ot read Why ese oud the ties be good i a udergroud staio? Did you ko? The vitorias put ties o the outside of their shops as e, ad o f t e u s e d t h e m t o r e a t e s i g s a d a d ve r t s Why oud ties be good i a buthers shop? Did you ko? Some hurhes ad athedras have ties datig bak to the before t h e t u d o r s, a d t h e y a r e s t i i u s e t o d a y Why oud you put ties o a hurh foor? Did you ko? Most ties a ithstad extremy high temperatures, they eve use them o the outside of the spae shutte to protet it as it returs to earth! Where are the ties i this room? Did you ko? Vitorias beame more ad more aare of ger ms ad ifetio They ated to keep hospitas as ea as possibe Why are tie better tha other forms of deoratio? Did you ko? Before most peope had bathrooms i their homes they used ash stads ike this oe Ad jug of ater ad a bo as a they had Why oud ties be good for bathrooms? Crave Dui Jakfied Limited, Jakfied Tie Museum, Irobridg e Gorg e, Shropshire TF8 7LJ t e e p h o e : f a s i m i e : e - m a i : j e i f e r a v e d u i - j a k f i e d o u k r a v e d u i - j a k f i e d o u k

7 Log gaery Keep akig aroud the orer ad through the door Ca you fid this tie mura of the Quee ad sketh it? No you are at the ed of the museum Ca you dra your favourite tie i the spae beo or rite about the part of your visit you have ejoyed the most so far Crave Dui Jakfied Limited, Jakfied Tie Museum, Irobridge Gorge, Shropshire TF8 7LJ teephoe: fasimie: e-mai: jeifer@ravedui-jakfiedouk r a v e d u i - j a k f i e d o u k

8 Five Fatory Fats Do the stairs ad to the eft ti i at! s Fa Fa What are ties made from? g Did you ko that the press pushes the tie ith the eight of three eephats? Ho may ties a be made o the press eah day? O LISTEN, Ho muh fore does the press use to squeeze the ay ito a tie shape? What a you hear? The fatory has mahies ike giat vauum eaers to keep the air ea ad heathy Toes What temperature are the ties heated to i the ki? o C LOOK, What a you see? What does this sig mea? The moder fatory has ots of saftey guards ad sigs to keep us safe But most of the mahies sti used to make the ties are over 150 years od! Crave Dui Jakfied Limited, Jakfied Tie Museum, Irobridg e Gorg e, Shropshire TF8 7LJ t e e p h o e : f a s i m i e : e - m a i : j e i f e r a v e d u i - j a k f i e d o u k r a v e d u i - j a k f i e d o u k

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