Marianna's Flower








This flower is specially designed to match this hat.






*** This pattern is free. You may sell the products you make from my patterns but not the pattern itself. If you sell items from this pattern please link back to this post. Do not copy and repost this pattern or any of the photos and claim them as your own. ***

This pattern uses US crochet terms.




Yarn: Not important for this project. The flower on the picture is made with DK yarn (very soft mix of bamboo, wool, acrillyc) 
Hook size: Use the hook recommended for the yarn you are using
Stitches used: sc, hdc, dc, ss, ch, mc
Finished size: 3.5in (9cm) with DK yarn and 4mm hook

Abbreviations: This pattern uses US crochet terms, their matching UK terms can be found here
sc - single crochet
hdc - half double crochet
dc - double crochet
ss - slip stitch
ch - chain
mc - magic circle

Pattern:
In MC ch 3 (count as first dc), work 11 more dc, end with ss in top of ch 3.

Next round is worked in front loops only. * Ch 4, ss in the next st *, repeat 11 more times. End with ss in the front loop of the first st.

This round is worked in back loops only. * Ch 8, ss in the next st *, repeat 11 more times. End with ss in the back loop of the first st. You should have 12 chains of 8.

Now work only in the ch8 spaces. Ss in the first ch 8 space. Work sc, hdc, 18 dc, hdc, sc in the chain 8 space. End with ss in the next chain. Repeat 11 more times for each of the next ch spaces.

That's all.

You may sew a button in the center.
And this is how the flower looks like on hat




The pattern for Hat Marianna





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